Measuring and Modeling the Conductivity of Highly Insulating Materials

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Utah State University DigitalCommons@USU Physics Capstone Project Physics Student Research 8-1-017 Measuring and Modeling the Conductivity of Highly Insulating Materials David King Utah State University Follow this and additional works at: https://digitalcommons.usu.edu/phys_capstoneproject Part of the Physics Commons Recommended Citation King, David, "Measuring and Modeling the Conductivity of Highly Insulating Materials" (017). Physics Capstone Project. Paper 8. https://digitalcommons.usu.edu/phys_capstoneproject/8 This Report is brought to you for free and open access by the Physics Student Research at DigitalCommons@USU. It has been accepted for inclusion in Physics Capstone Project by an authorized administrator of DigitalCommons@USU. For more information, please contact dylan.burns@usu.edu.

Measuring and Modeling the Conductivity of Highly Insulating Materials David King Department of Physics 0 Project Research Mentors: Brian Wood and J.R. Dennison August 1, 017

I. INTRODUCTION Satellites and other spacecraft must be able to withstand hazardous conditions in order to be viable in their expected operating environments. One specific hazard that occurs due to incident radiation is spacecraft charging. Insulating materials, frequently used in spacecraft and other electrical equipment, while very good at preventing charge flow, also store charge very well. This can create problems; specifically, if the charge decay time exceeds the orbital period, not all charge will be dissipated before orbital conditions act again to further charge the satellite. As the insulator accumulates charge, the electric field will rise until the insulator breaks down [1]. Thus, understanding the mechanisms that dictate conductivity, or how charge flows, in insulating materials is of critical importance for determining spacecraft charging effects with these materials. Materials of particular interest in this study are highly disordered insulating materials (HDIM), specifically highly insulating polymers. The Constant Voltage Conductivity (CVC) chamber (Figure 1) of the Utah State University Materials Physics Group (USU MPG) has been developed to measure the conductivity of these materials. In this experiment, the CVC chamber was used to simulate the space environment by having the samples in vacuum. This also prevented the materials from being contaminated. Samples of low density polyethylene (LDPE) and Kapton, or polyimide (PI), were placed between the two parallel plate electrodes while a constant electric field was applied from a battery voltage source (Figure 1, left). From the resulting current, I, the conductivity, σ, was calculated using the expression σ =!! =!!!! where d is the sample thickness, V is the applied voltage, and A is the electrode area. Lastly, the time-dependent conductivity was fit with a multi-process, physics-based model of time-dependent conductivity to characterize the distribution of atomicscale defects in the HDIM studied and to evaluate the model itself. These measurements and analysis provide baseline conductivity and charge decay times useful for determining spacecraft charging effects in materials regularly used in space. (1) FIG 1. CVC assembly. Left: Electrical schematic of the CVC chamber. 1 Right: Picture of CVC chamber. King: PHYS 0 Project 1 August 1, 017

A. Conductivity Theory and HDIM Conductivity is the measure of how charge moves through a material under the influence of an electric field. Often this is determined by measuring the current resulting from a voltage applied to the material, using (1) to calculate the material s conductivity. To understand the macroscopic behavior of materials, it is necessary first to understand how the materials behave at the microscopic level. To this end, materials can generally be classified as conductors, semiconductors, and insulators. This classification is based on how charge moves through the material, which is determined by the size of the given material s band gap, or the energy gap between the conduction and valence bands (Figure ). In insulators, the band gap is large, compared with the thermal energy, so that electrons cannot easily be excited from the valence to the conduction band. Disordered materials have an amorphous or even semi-crystalline structure, instead of a pure crystalline lattice []. Thus, many of the assumptions and resulting properties for crystalline materials (such as long-range order, periodicity, and welldefined band gaps and density of states (DOS)) cannot be directly applied to disordered materials. Disorder can result from many different causes, including concentrations of impurity atoms, geometric irregularities, the geometry of polymer chains, and their impurities []. Disorder in materials creates a DOS in the band gap, which means it produces localized, or trap, states of varied energy levels within the gap []. So, in disordered materials, electrons can move in the forbidden energy range within the band gap by hopping between these localized states (Figure ). This movement takes place by primarily two methods: thermally assisted hopping and variable range hopping, or tunneling. This hopping motion of electrons is primarily how charge moves in HDIM []. Equation models the timedependent conductivity in the polymers concerned, with each term modeling a different physical process that dominates in different time intervals [1]: σ!"!#$ t = σ!"# + σ!"#!!! e! σ!"#$ t!!!! Θ τ!"#$% t +!!!"# + σ!"## t!! +! σ!"#$% t!!!! Θ(t τ!"#$% ) () FIG. Disordered band structure. King: PHYS 0 Project August 1, 017

The saturation, or dark, conductivity (σsat) is a constant, equilibrium conductivity and is reached at long time scales. The polarization conductivity (σpol) is a combination of effects due to the material s response to an applied electric field. This typically dominates for about the first couple minutes or less after the voltage is applied. Diffusive conductivity (σdiff) results from normal movement and spreading of the centroid of the charge distribution through the FIG. Diffusive versus dispersive transport. material with time (Figure, left). This is typical of charge movement in ordered, or crystalline materials. Dispersive (σdisp) and transit (σtrans) conductivity both describe the evolving distortion of spatial charge in the material (Figure, right). These two terms together are known as dispersive transport and are the mechanisms responsible for charge transport in HDIM, as opposed to diffusive transport. Dispersive conductivity is active before the time τtransit, which is the time when the charge front first reaches the edge of the material. The transit conductivity occurs after τtransit and until the material reaches equilibrium. The transition between dispersive and transit transport is an abrupt change, or kink, in the conductivity, as shown in Figure. LDPE Conductivity Conductivity (ohm cm) -1 x -19 x 1 FIG. LDPE conductivity versus time: τtransit zoom after the dark conductivity was subtracted from the LDPE conductivity data (log-log plot). King: PHYS 0 Project August 1, 017

Figure illustrates diffusive (left) and dispersive (right) transport to compare the two mechanisms. In diffusive transport, the charge front broadens symmetrically and travels intact until it reaches the far side of the sample at the transit time. In dispersive transport however, the charge front distorts asymmetrically and the majority of the charge distribution does not move across the sample. On the contrary, the transit time occurs when the leading edge of the charge distribution reaches the far side of the sample, but a large part of the charge distribution has not moved from its initial position. Lastly, the parameter α is indicative of the width of trap state energy distribution, i.e. the concentration of states at specific energy levels, which relates to the level of disorder in the material [1]. Because α represents these intrinsic material properties, the theory behind () predicts α, in the dispersive and transit terms, will be the same for each material. So, because α should be the same for both dispersive and transit mechanisms, the sum of power law exponents (1 α) + (1 + α) should be equal to ; this then is a measure of the viability of () based on experimental results []. B. CVC Experiment Conductivity measurements of LDPE and PI were made using the CVC chamber at USU. The CVC chamber has been recently upgraded to make its measurements more precise and increase its capabilites. One of these upgrades is the use of a high voltage battery power supply [,]. Using a battery power supply eliminates any alternating displacement current contribution to the conductivity due to the ripple in AC power supplies; this reduces the error in the measured current. This battery supply is comprised of several packs of 9 V batteries connected in series. The individual packs are connected together in series to produce different voltages, depending on what is desired for the material being tested. Because LDPE and PI are both very highly insulating, the high voltages of 0 V and 7 V were used. The current produced by the applied voltage was measured for each material using a Keithley 1 electrometer. This current was recorded and logged with LabView software. Data collection typically lasted until the sample was believed to have reached equilibrium, usually several days, at which time the voltage supply was turned off and the data extracted. The CVC system at Utah State can measure currents as low as 1 x -1 A, or 0.1 fa. However, there is a constant noise, or zero offset, current which is always present due to systematic error in the Keithley 1 electrometer, which records a finite current when no current flows. It is typically 1 fa and not more than. fa. This may also include minimal contributions from thermal, radiation, and circuitry effects. When this offset current is subtracted from the data, the resolution is again 0.1 fa. Therefore, the USU CVC system s lowest measureable conductivity is presently as follows: x - (Ω. cm) -1 at 0 V and x - (Ω. cm) -1 at 7 V, assuming a typical sample dimension of 7. μm thick and 1.9 cm in area. The battery supply produced the applied voltages shown in Figures 18,, and 8. The most unstable region in the applied voltage is the first 1 hr for both King: PHYS 0 Project August 1, 017

unirradiated PI and radiated PI at 7 V (Figures 18 and ) and the first 0 hr for LDPE at 0 V (Figure 8). The stability of the battery supply is shown in Table 1, where tp0 is the time when the voltage was applied to the sample. Table 1. Battery voltage source stability. Sample Time interval (hr) Relative uncertainty (%) Unirradiated PI t p0 - end 0. t p0 1.8 0. 1.8 - end 0. Radiated PI t p0 - end 0. t p0 1. 0. 1. - end 0.1 LDPE t p0 - end 0. t p0.7 0..7 - end 0.0 The thicknesses of the samples used were as follows: unirradiated PI was.0±0.0 μm and % systematic uncertainty; radiated PI was.±0. μm and % systematic uncertainty; and LDPE was 8.±0. μm and % systematic uncertainty. The PI and LDPE were both obtained as sheets from GoodFellow. These sheets were then cut to fit on a sample plate (front electrode in Figure 1, left). The samples were prepared by cleaning them with isopropyl alcohol and baking them in the USU bakeout chamber for four days. This chamber heats the samples to approximately 1 C for PI and C for LDPE at vacuum of less than or equal to 1x - Torr to drive off any moisture or other volatile contaminants. After this, the samples were placed in a nitrogen-filled, enclosed environment until they were placed in the CVC chamber for testing. Samples of PI were irradiated for a total of. hr in the USU Space Survivability Test (SST) chamber. The samples were located approximately cm from the Sr beta radiation source and were irradiated at a dose rate of 0.±0.0 krad/hr. Thus, the total ionizing dose was 0± krad. The samples were removed from the SST chamber four times, three of which were for extended periods (greater than 1 minutes). The samples were kept in a sealed plastic bag to minimize exposure to air during periods when they were not in vacuum. When the samples were outside the chamber for extended periods and when they were removed for the final time, they were placed in a nitrogen-filled, enclosed environment. The PI sample was in the nitrogen-filled environment for 17.8 days ±0.1 hr following irradiation and prior to conductivity tests. II. RESULTS Having obtained the current versus time data for unirradiated PI, radiated PI, and LDPE, the conductivity was calculated and graphed in Igor Pro. The measured King: PHYS 0 Project August 1, 017

current data were adjusted to remove a constant zero offset current. The zero offset, or background, current was measured prior to applying the voltage by allowing time for the sample to show a steady, equilibrium current without any applied voltage. This offset current was later calculated and subtracted from the data in Igor Pro. The conductivity versus time curve was then fit with the model in () to determine the viability of the model and underlying theory. Also, the conductivity data were smoothed in Igor Pro using a box algorithm. PI and radiated PI were averaged using 00 data points (0 s) and LDPE using 0 data points (10 s), respectively. Using this many points to average these data is justified because LabView recorded a data point approximately every 1. s. The shortest data collection time was 7.8 hr, or about.9x s. This correlates to roughly.x data points for the shortest run. However, smoothing conductivity data is not justified in the polarization region (about the first 10 s after the voltage is applied), because this region contains only around 0 to 0 data points and the current is changing rapidly. The precision of time measurements were on the order of ±0.1 s. Except for the first few data points related to polarization, the uncertainties in time were negligible, smaller than the width of the data points. Random error in the current measurements was determined by the method in [] and calculated in Igor Pro. There was also a systematic error of ±% in current measurements due to the Keithley 1 electrometer. Short-term transients in current, particularly evident at low currents (see Figure 8) are due to external stimuli, such as motion in the room. The area uncertainty was 1.9±0.0 cm (±1%) and ±% systematic uncertainty. Systematic errors in area are dominated by uncertainties in the contact area and the effective electrode area [1]. The uncertainties in sample thicknesses were as follows: unirradiated PI was.0±0. μm (±%) and % systematic uncertainty; radiated PI was.±0. μm (±1%) and % systematic uncertainty; and LDPE was 8.±0. μm (±1%) and % systematic uncertainty. The random errors in the applied voltage for each material are listed in Table 1 as the relative uncertainty in the applied voltage from when the voltage was applied (tp0) to the end of data collection. Systematic uncertainties in voltage were negligible. The random error in the dark conductivity, in accord with [], was calculated by addition in quadrature of the random errors in current, voltage, thickness, and area. This yielded a precision of % for unirradiated PI, radiated PI, and LDPE. The accuracy in dark conductivity for unirradiated PI, radiated PI, and LDPE was 11%. This was calculated by addition of the systematic uncertainties in current, voltage, thickness, and area; this is dominated by the systematic uncertainties in current and area. The percent fractional residual of the conductivity model () was calculated from the following equation: (!!!"#!!!!"#" )!(!)!"# 0% () This was then plotted to show how well the model fit the conductivity data. The uncertainty in the transit time, τtransit, was determined by finding the width of the curve, or kink, in the data around the transit time. This curve was most distinct when the dark conductivity had been subtracted from the conductivity data (Figure ). For the other fitting parameters, the uncertainty was determined by the King: PHYS 0 Project August 1, 017

Radiated LDPE finding the change in the parameter that produced a ±% difference in the appropriate percent fractional residual plot. The different parameters fit were as follows: τtransit, αdisp, αtrans, σ!"#, σ!!!!"#, σ!"#$, σ!"#$%, and τpol (for three-polarization fits!!! the polarization terms became σ!"#_!, σ!"#_!, σ!"#_!, τpol_1, τpol_, and τpol_). The parameters, with their error, are listed in Table. Also listed is tp0, the time when the voltage was applied to the sample. It should be noted that the following figures begin at approximately tp0, not the time when data started being recorded for each sample. Parameter Unirradiated PI Column Table. Modeled conductivity parameters. PI Column 1-pol -pol 1-pol -pol 1-pol! (1.8±0.8)x -18 (1.8±0.7)x -18 (±)x -19 (1±)x -18 (±)x -17 σ!"#_!! (9±)x -18 (7±)x -18 σ!"#_! σ!"#_!! σ!"#$! (±)x -17 (7±)x -17 (1.1±0.)x -19 (1.±0.)x -19 (1.±0.)x -18! σ!"#$% (.0±0.)x -18 (.7±0.8)x -18 (±)x -17 σ!"# (Ωcm) -1 (1.±0.0)x -0 (.07±0.0)x -0 (8.±0.)x -19 (hr) 0.10 0. 0.78 τ pol_1 (9±)x - (9±)x - (±)x - (.±0.8)x - (1±)x - τ pol_ (.±0.)x - (.±0.7)x - τ pol_ (0.7±0.1)x - (.0±0.8)x - (hr) 0± ±1.8±0. α disp 0.9±0.0 0.7±0.0 0.±0.1 α trans 0.0±0.0 0.0±0.0 0.±0.1 (1-α disp )+(1+α trans ) = +( α trans - α disp) 1.9±0.1 1.9±0.1.0±0. King: PHYS 0 Project 7 August 1, 017

A. Unirradiated PI Conductivity (ohm cm) -1-1 -17-18 -19-0 PI Conductivity Modeled Conductivity Polarization_1 Dispersion Transit Dark Conductivity -1 0 0 0 0 0 0 0 FIG. Unirradiated PI conductivity (one-polarization fit) versus time: log-linear plot. 1 10 10 10 10 10 1 1 1 00 0 0 Conductivity (ohm cm) -1-1 -17-18 -19-0 PI Conductivity Modeled Conductivity Polarization_1 Dispersion Transit Dark Conductivity -1 1 0 τ transit FIG. Unirradiated PI conductivity (one-polarization fit) versus time: log-log plot. King: PHYS 0 Project 8 August 1, 017

Conductivity (ohm cm) -1-1 -17-18 -19-0 PI Conductivity Modeled Conductivity Polarization_1 Polarization_ Polarization_ Dispersion Transit Dark Conductivity -1 0 0 0 0 0 0 0 1 10 10 10 10 10 1 1 1 00 0 0 FIG 7. Unirradiated PI conductivity (three-polarization fit) versus time: log-linear plot. -1 Conductivity (ohm cm) -1-17 -18-19 -0 PI Conductivity Modeled Conductivity Polarization_1 Polarization_ Polarization_ Dispersion Transit Dark Conductivity -1 1 0 τ transit FIG 8. Unirradiated PI conductivity (three-polarization fit) versus time: log-log plot. King: PHYS 0 Project 9 August 1, 017

Smoothed Conductivity (ohm cm) -1-18 9 8 7-19 9 8 7 Smoothed PI Conductivity Modeled Conductivity -0 W Th F Sat Sun M T W Th 0 0 1 10 10 1 1 0 FIG 9. Smoothed unirradiated PI conductivity (one-polarization fit) versus time: log-linear plot. Conductivity (ohm cm) -1-17 -18 8 7 8 7 PI Conductivity Modeled Conductivity Polarization_1 Dispersion -19 0.18 0.1 0.1 0.10 0.1 FIG. Unirradiated PI conductivity (polarization zoom and one-polarization fit) versus time: log-linear plot. 0.18 0.17 0.17 0.1 0.18 0.188 King: PHYS 0 Project August 1, 017

Conductivity (ohm cm) -1-17 -18 7 7 PI Conductivity Modeled Conductivity Polarization_1 Polarization_ Polarization_ Dispersion -19 0.18 0.1 0.1 0.10 0.1 0.18 0.17 0.17 0.1 FIG 11. Unirradiated PI conductivity (polarization zoom and three polarization fit) versus time: log-linear plot. 0.18 0.188 00 Percent Fractional Residual Conductivity (%) 0 00 00 00 0-00 -00-00 -0-00 0 0 FIG 1. Percent fractional residual one-polarization unirradiated PI conductivity versus time: linear-linear plot. 1 10 10 1 1 0 King: PHYS 0 Project 11 August 1, 017

10 10 Percent Fractional Residual Conductivity (%) 1 0 0 - -0-0 - - -1-10 -10 T W Th F Sat 1 0 FIG 1. Percent fractional residual one-polarization unirradiated PI conductivity versus time: linear-log plot. 0 Percent Fractional Residual Conductivity (%) 0 0-0 -0-10 -00-0 -00-0 -00-0 -00 0.1 0.10 0.1 0.1 0.17 0.1 0.18 FIG 1. Percent fractional residual one-polarization unirradiated PI conductivity (polarization zoom) versus time: linear-linear plot. King: PHYS 0 Project 1 August 1, 017

10 10 Percent Fractional Residual Conductivity (%) 1 0 0 - -0-0 - - -1-10 -10 T W Th F Sat 1 0 FIG 1. Percent fractional residual three-polarization unirradiated PI conductivity versus time: linear-log plot. Percent Fractional Residual Conductivity (%) 0 0 0 0 0 0 - -0-0 -0 0.1 0.10 0.1 0.1 0.17 0.1 0.18 FIG 1. Percent fractional residual three-polarization unirradiated PI conductivity (polarization zoom) versus time: linear-linear plot. King: PHYS 0 Project 1 August 1, 017

Percent Fractional Residual Conductivity (%) 0 1 0 - - -1 W Th F Sat Sun M T W Th 0 0 1 10 10 1 1 0 FIG 17. Percent fractional residual one-polarization smoothed unirradiated PI conductivity versus time: linear-linear plot. 789 787 78 Applied Voltage (V) 78 781 779 777 77 W Th F Sat Sun M T W Th 0 0 1 10 10 1 1 FIG 18. Unirradiated PI applied voltage versus time. 0 King: PHYS 0 Project 1 August 1, 017

00. 00.0 99. Sample Temp (K) 99.0 98. 98.0 97. 97.0 9. 9.0 W Th F Sat Sun M T W Th 0 0 1 10 10 1 1 0 FIG 19. Unirradiated PI sample temperature versus time. The unirradiated PI conductivity data were later fit using a model that included three polarization terms. The resulting conductivity equation is! σ!"!#$ t = σ!"# + σ!"#! e!!!!"#!! + σ!"#! e!!!!"#!! + σ!"#! e!!!!"#! +! σ!"## t!!! + σ!"#$ t!!!!! Θ τ!"#$% t + σ!"#$% t!!!! Θ(t τ!"#$% ) () Figures through 11 are graphs of unirradiated PI conductivity versus time. They include the modeled conductivity fit using () and () for one-polarization (Figures,, and ) and three-polarization (Figures 7, 8, and 11) term fits, and the individual contributions of the constituent terms: polarization, dispersion, transit, and dark conductivity. Figures and 11 are log-linear plots of the polarization region of the conductivity data, or about the first 10 s after tp0 (approximately 0.1-0.188 hr). Figures 1 through 17 are plots of the percent fractional residual conductivity versus time. Figure 9 is a graph of the smoothed PI conductivity versus time and its corresponding percent fractional residual plot is Figure 17. For Figure 9, the conductivity data were averaged over 00 data points. Figure 18 is a graph of the applied voltage versus time for this data set and Figure 19 is the sample temperature versus time. After the first sixteen hours, Figure 18 shows a linear drift in the voltage (due to battery discharge) of about 1 mv/hr. This systematic effect is canceled out in the conductivity calculation. Figure 1 is included for completeness King: PHYS 0 Project 1 August 1, 017

to show how well all the data collected are fit by (). Table contains the parameters resulting from fitting the PI data with () and (). Referring to Figures and 8, it is apparent that the data for unirradiated PI conductivity is fit well by both () and (). Even after τtransit, the percent error for the majority of data points is ±0% (Figure 1 for () and Figure 1 for ()). Also, the difference between fitting the unirradiated PI data with () and () is only apparent in the initial minutes after the voltage is applied (the first 0.1hr in Figures 1 and 1). Because the smoothed conductivity does not accurately show the rapidly changing polarization region, Figures 1 and 1 provide an analysis for the fits of () and () which show that the polarization part of the unirradiated PI data is fit by () to within ±% for a majority of data points (Figure 1). Using two polarization terms was attempted, but it was found that this left data points out of the fitting that could be included by using a third polarization term. From Figure 17 it is evident that both () and () fit, for the majority of the data, to less than +% and -0%. There appear to be two classes of agreement with the modeled conductivity. One is short-term variations (on the order of minutes to hours); this is small, on the order of -%, with longer variations on the order of tens of hours being ±-% (Figure 17). Figure 17 also shows an even longer trend (see hr to 0 hr) that is ±0%. The longer trend may be due to systematic errors such as temperature or current zero drifts. Areas where the percent fractional residual plots (e.g. Figure 17) are positive correspond to the modeled conductivity over-predicting the unirradiated PI conductivity data. This is illustrated by Figure 17 in the region from 10-0 hr. Conversely, where the percent fractional residual plot is negative corresponds to areas where the modeled conductivity under-predicts the data. Figure 17, in the region from 0- hr shows this. Also, Figure 1 shows that () under-predicts the PI conductivity data in the polarization region. Figure 18 shows the cyclic behavior of the temperature of the sample plate in the CVC chamber (Figure 1). This corresponded to temperature cycles of the room where the CVC chamber is located, which was not measured but conjectured based on the experience of the experimenters in the room. As shown in Figure 19, this behavior has roughly hr cycles, with maxima alternating with minima about every 1 hr in the approximate regions 1- hr and 10-0 hr. The exception is the region from about -10 hr in Figure 18. This roughly 8 hr span was a weekend, when the temperature of the room was more constant due to the door of the room staying closed for two days. King: PHYS 0 Project 1 August 1, 017

B. Radiated PI -17 PI Conductivity Modeled Conductivity Polarization_1 Dispersion Transit Dark Conductivity Conductivity (ohm cm) -1-18 -19-0 -1 0 0 0 0 0 0 1 10 10 10 FIG 0. Radiated PI conductivity (one-polarization fit) versus time: log-linear plot. -17 PI Conductivity Modeled Conductivity Polarization_1 Dispersion Transit Dark Conductivity Conductivity (ohm cm) -1-18 -19-0 -1 7 8 9 1 7 8 9 7 8 9 0 FIG 1. Radiated PI conductivity (one-polarization fit) versus time: log-log plot. King: PHYS 0 Project 17 August 1, 017

Conductivity (ohm cm) -1-17 -18-19 -0 PI Conductivity Modeled Conductivity Polarization_1 Polarization_ Polarization_ Dispersion Transit Dark Conductivity -1 0 0 0 0 0 FIG. Radiated PI conductivity (three-polarization fit) versus time: log-linear plot. 0 1 10 10 10 Conductivity (ohm cm) -1-17 -18-19 -0 PI Conductivity Modeled Conductivity Polarization_1 Polarization_ Polarization_ Dispersion Transit Dark Conductivity -1 7 8 9 1 7 8 9 7 8 9 0 FIG. Radiated PI conductivity (three-polarization fit) versus time: log-log plot. King: PHYS 0 Project 18 August 1, 017

Smoothed Conductivity (ohm cm) -1-18 9 8 7-19 9 8 7 Smoothed PI Conductivity Modeled Conductivity -0 0 Sat Sun M T W 0 0 0 0 FIG. Smoothed radiated PI conductivity (one-polarization fit) versus time: log-linear plot. 0 1 10 10 10 PI Conductivity Modeled Conductivity Polarization_1 Dispersion Conductivity (ohm cm) -1-17 9 8 7-18 9 8 7-19 0.0 0. 0.8 0.7 0.7 0. 0.8 0.88 0.9 FIG. Radiated PI conductivity (polarization zoom and one-polarization fit) versus time: log-linear plot. 0.9 0.00 King: PHYS 0 Project 19 August 1, 017

Conductivity (ohm cm) -1-17 -18 7 7 PI Conductivity Modeled Conductivity Polarization_1 Polarization_ Polarization_ Dispersion -19 0.0 0. 0.8 0.7 0.7 0. 0.8 0.88 0.9 FIG. Radiated PI conductivity (polarization zoom and three polarization fit) versus time: log-linear plot. 0.9 0.00 Percent Franctional Residual Conductivity (%) 00 00 0-0 -00-00 -0-0 0 0 0 0 0 0 FIG 7. Percent fractional residual one-polarization radiated PI conductivity versus time: linear-linear plot. 0 1 10 10 10 King: PHYS 0 Project 0 August 1, 017

Percent Franctional Residual Conductivity (%) 10 10 1 0 0 - -0-0 - - -1-10 -10 F Sat Sun M 7 8 9 1 7 8 9 7 8 9 0 FIG 8. Percent fractional residual one-polarization radiated PI conductivity versus time: linear-log plot. 0 Percent Franctional Residual Conductivity (%) 0-0 -00-00 -00-00 -00-0 -0-0 -00 0.8 0.7 0.7 0. 0.8 0.88 0.9 0.9 FIG 9. Percent fractional residual one-polarization radiated PI conductivity (polarization zoom) versus time: linear-linear plot. 0.00 King: PHYS 0 Project 1 August 1, 017

Percent Fractional Residual Conductivity (%) 10 10 1 0 0 - -0-0 - - -1-10 -10 F Sat Sun M 7 8 9 1 7 8 9 7 8 9 0 FIG 0. Percent fractional residual three-polarization radiated PI conductivity versus time: linear-log plot. 0 Percent Fractional Residual Conductivity (%) 0 0 - -0-0 -0-0 -0 0.8 0.7 0.7 0. 0.8 0.88 0.9 0.9 FIG 1. Percent fractional residual three-polarization radiated PI conductivity (polarization zoom) versus time: linear-linear plot. 0.00 King: PHYS 0 Project August 1, 017

Percent Fractional Residual Conductivity (%) 0 1 0 - - -1-0 - 0 0 Sat Sun M T W 0 0 0 0 FIG. Percent fractional residual one-polarization smoothed radiated PI conductivity versus time: linear-linear plot. 0 1 10 10 10 78 7 Applied Voltage (V) 778 77 77 77 7 78 Sat Sun M T W 0 0 0 0 0 0 0 1 10 10 10 Time (hr) FIG. Radiated PI applied voltage versus time. King: PHYS 0 Project August 1, 017

97.8 97. Sample Temperature (K) 97. 97. 97.0 9.8 9. 9. 9. 9.0 9.8 9. 9. 9. 9.0 Sat Sun M T W 0 0 0 0 0 0 0 1 10 FIG. Radiated PI sample temperature versus time. 10 10 The radiated PI conductivity data were also fit using the three-polarization term model, (). Figures 0, 1, and are graphs of the radiated PI conductivity fit using () and Figures,, and use (). These also include the individual contributions of the constituent terms in () and (). Figures and are loglinear plots of the polarization region of the conductivity data (approximately 0.- 0. hr). Figures 7 through are plots of the percent fractional residual conductivity versus time using (). The graph of applied voltage versus time for the radiated PI data set is shown in Figure and Figure is the sample temperature versus time. Figure shows a linear drift in the voltage (due to battery discharge) of about 1 mv/hr after the initial period of instability, which is approximately the first 1 hr. This systematic effect due to linear voltage drift is canceled out in the conductivity calculation. Figure shows the smoothed radiated PI conductivity and the percent fractional residual of the smoothed radiated PI conductivity is shown in Figure. The radiated PI conductivity data were averaged over 00 data points to generate Figure. Figure 7 is included for completeness to show how well all the data collected are fit by (). The parameters resulting from fitting the radiated PI data with () and () are displayed in Table. The radiated PI conductivity data is modeled well by () and (), as shown in Figures 7-. Even in the later part of the data, where fluctuations in temperature (Figure ) appear to have caused fluctuations in the conductivity, the percent error, as shown in the percent fractional residual plot in Figure 8, is less than ±0% for the majority of data points. Again, the smoothed conductivity and its King: PHYS 0 Project August 1, 017

percent fractional residual do not accurately represent the polarization region of the data. The accuracy in this area is shown in Figure 9, for the model fit with (), and Figure 1, for the model fit using (). Comparing Figures 9 and 1 clearly shows that three polarization terms fit this region with greater accuracy than only one polarization term: () has a maximum of -00% error, with about half the points in this region having over -1% error (Figure 9). Figure 1 shows that the majority of points in the polarization region are fit to within ±% by (). As with the PI data, however, after the first 0. hr subsequent to when the voltage is applied, the two models are nearly identical (Figure 8 for () and Figure 0 for ()). Additionally, Figure shows that the majority of data points, given in the smoothed conductivity, are fit to within ±% by (). As with unirradiated PI, there appear to be two classes of agreement with the modeled conductivity: short and long-term variations. First, short-term variations (time scales on the order of minutes to hours) are small, on the order of -%. Longer short-term variations are on the order of tens of hours and are larger, around ±-0% (Figure ). The long-term variation is shown in Figure (see hr to 10 hr), which is ±%. The longer trend may be due to systematic errors such as temperature or current zero drifts, as with unirradiated PI. Here, as with the fits of () and () for unirradiated PI, Figure shows the areas where the models over-predict or under-predict the data because () and () are noticeably different only in the polarization region. From 0-7 hr the models under-predict the radiated PI data and from 10 hr to the end of data collection, the models over-predict the data. Also, Figure 9 shows that () again under-predicts the measured conductivity in the polarization region. Figure shows that, as with the unirradiated PI data, the sample temperature fluctuated on about hr cycles, corresponding to daily fluctuations in room temperature. King: PHYS 0 Project August 1, 017

C. LDPE Conductivity (ohm cm) -1-17 9 8 7-18 9 8 7 LDPE Conductivity Modeled Conductivity Polarization Dispersion Transit Dark Conductivity -19 0 0 0 0 0 0 FIG. LDPE conductivity (polarization fit) versus time: log-linear plot. Conductivity (ohm cm) -1-17 9 8 7-18 9 8 7 LDPE Conductivity Modeled Conductivity Polarization Dispersion Transit Dark Conductivity -19 8 9 1 7 8 9 7 8 9 0 FIG. LDPE conductivity (polarization fit) versus time: log-log plot. King: PHYS 0 Project August 1, 017

Conductivity (ohm cm) -1-17 -18 8 7 8 7 LDPE Conductivity Modeled Conductivity Dispersion Transit Dark Conductivity -19 0 0 0 0 0 0 FIG 7. LDPE conductivity (no-polarization fit) versus time: log-linear plot. Conductivity (ohm cm) -1-17 -18 8 7 8 7 LDPE Conductivity Modeled Conductivity Dispersion Transit Dark Conductivity -19 8 9 1 7 8 9 7 8 9 0 FIG 8. LDPE conductivity (no-polarization fit) versus time: log-log plot. King: PHYS 0 Project 7 August 1, 017

Smoothed Conductivity (ohm cm) -1-17 9 8 7-18 9 8 7 Smoothed LDPE Conductivity Modeled Conductivity -19 0 Th F Sat 0 0 0 FIG 9. Smoothed LDPE conductivity (polarization fit) versus time: log-linear plot. 0 0 LDPE Conductivity Modeled Conductivity Polarization Dispersion Conductivity (ohm cm) -1-17 9 8 7-18 0. 0. 1.00 1. 1.0 1.0 1.0 1.0 FIG 0. LDPE conductivity (polarization fit and polarization zoom) versus time: log-linear plot. King: PHYS 0 Project 8 August 1, 017

LDPE Conductivity Modeled Conductivity Dispersion Conductivity (ohm cm) -1-17 9 8 7-18 0. 0. 1.00 1. 1.0 1.0 1.0 1.0 FIG 1. LDPE conductivity (no-polarization fit and polarization zoom) versus time: log-linear plot. 0 Percent Fractional Residual Conductivity (%) 0-0 -00-00 -00-00 -00-0 -0 0 0 0 0 Time (hr) FIG. Percent fractional residual one-polarization LDPE conductivity versus time: linear-linear plot. 0 0 King: PHYS 0 Project 9 August 1, 017

Percent Fractional Residual Conductivity (%) 0 1 0 - - -1-0 - W Th F Sat 8 9 1 7 8 9 7 8 9 0 Time (hr) FIG. Percent fractional residual one-polarization LDPE conductivity versus time: linear-log plot. 0 Percent Fractional Residual Conductivity (%) 0 0 0 0 0 0-0.70 0.7 0.7 0.77 Time (hr) FIG. Percent fractional residual one-polarization LDPE conductivity (polarization zoom) versus time: linear-linear plot. 0.7 0.78 0.7 0.79 0.0 King: PHYS 0 Project 0 August 1, 017

Percent Fractional Residual Conductivity (%) 0 1 0 - - -1-0 - W Th F Sat 8 9 1 7 8 9 7 8 9 0 Time (hr) FIG. Percent fractional residual no-polarization LDPE conductivity versus time: linear-log plot. 0 Percent Fractional Residual Conductivity (%) 0 0 0 0 0 0-0.70 0.7 0.7 0.77 0.7 Time (hr) 0.78 0.7 0.79 FIG. Percent fractional residual no-polarization LDPE conductivity (polarization zoom) versus time: linear-linear plot. 0.0 King: PHYS 0 Project 1 August 1, 017

Percent Fractional Residual Conductivity (%) 0 - - 0 Th F Sat 0 0 0 0 0 FIG 7. Percent fractional residual one-polarization smoothed LDPE conductivity versus time: linear-linear plot. Applied Voltage (V) 1 0 19 18 17 1 0 0 Th F Sat 0 0 0 0 Time (hr) FIG 8. LDPE applied voltage versus time. 0 King: PHYS 0 Project August 1, 017

98.0 97. Sample Temperature (K) 97.0 9. 9.0 9. 9.0 9. 0 Th F Sat 0 0 0 0 0 FIG 9. LDPE sample temperature versus time. 0 The conductivity models shown above for LDPE do not include a fit with the three-polarization model because it made the resulting model more inaccurate overall. Instead, fitting the LDPE data using a model without any polarization terms was attempted:! σ!"!#$ t = σ!"# + σ!"## t!! +! σ!"#$ t!!!!! Θ τ!"#$% t + σ!"#$% t!!!! Θ(t τ!"#$% ) () Figures through 1 are graphs of LDPE conductivity versus time. They include the modeled conductivity fit using () and () for one-polarization (Figures,, and 0) and no-polarization (Figures 7, 8, and 1) term fits, and the individual contributions of the constituent terms in () and (). Figures 0 and 1 are loglinear plots of the polarization region (approximately 0.7-0.8 hr) of the conductivity data. Figures through 7 are plots of the percent fractional residual conductivity versus time using (). The smoothed LDPE conductivity is plotted in Figure 9 and its corresponding percent fractional residual plot is Figure 7. For Figure 9, the conductivity data were averaged over 0 data points. Figure 8 is a graph of the applied voltage for the LDPE data set, which shows a linear drift in the voltage (due to battery discharge) of roughly 1 mv/hr after the first 0 hr where the applied voltage was unstable. The systematic effect from this linear voltage drift is canceled out in the conductivity calculation. Figure 9 is a plot of sample temperature versus time to show how temperature variation may have affected the LDPE conductivity data. Figure is included for completeness to show how well all King: PHYS 0 Project August 1, 017

the data collected are fit by (). The parameters resulting from fitting the LDPE data with () and () are displayed in Table. The model of () does not fit the LDPE data as well in the region from 1. hr to 0 hr (Figures ). This is believed to be due to temperature variations in the CVC chamber (Figure 9). The recorded temperature in that region was highly erratic and displayed jumps of. K in about one second, which did not correlate to temperature variations in the room (more accurately depicted by Figure in the region after about hr based on the room temperature conjectured from the experience of the experimenters). The region from when the voltage was turned on (tp0) to hr had a standard deviation in temperature of 0. K and the region from hr to the end of the data run had a standard deviation of 0. K. So, the region in question had double the standard deviation of the less noisy period. Thus, the temperature data in these areas may have been erroneously recorded by the data measurement system, yielding inaccurate data there. Because of that, it was not possible to determine if temperature fluctuations could have caused variations making the models not fit the data well in that region. However, as shown in Figures and, () and () fit the LDPE conductivity data even better than () and () fit the unirradiated PI and radiated PI data. As shown in Figures and, the majority of the LDPE data is fit to within ±1% by both () and () and the models of () and () are nearly identical in fitting the LDPE data. Figure 7, based on the smoothed LDPE conductivity, shows that the majority of data points are fit to within ±% by (). The accuracy of () and () in the polarization part of the data is shown in Figures and because the smoothed conductivity is not accurate in that area. Upon examination, Figures and show that there is virtually no difference for this LDPE data between () and () in the polarization region as well. In fact, as shown in Figures and, looking at the time between 0.7 hr and 0.78 hr, the data is fit slightly better by () than by (). Other than that, there is no noticeable difference between the two models. Thus, the polarization term has no significant contribution to the model of conductivity for this LDPE data. Here, as with unirradiated and radiated PI, there appear to be two classes of agreement with the modeled conductivity. Short-term variations occur on two time scales: on the order of minutes to hours and on the order of tens of hours. For the scale of minutes to hours, variations are on the order of 1% (Figure 7). For time scales on the order of tens of hours, variations are on the order ±1-1% (Figure 7). Figure 7 also shows a long-term trend (see hr to hr) that is ±%. The longer trend may be due to systematic errors such as temperature or current zero drifts, as is hypothesized with unirradiated and radiated PI. The sharp decrease in conductivity from 0-7 hr is believed to be due to temperature effects (Figures 9 and 9). Figure 7 shows the accuracy of both () and (), when not considering the polarization area of the data. It is seen from this that () and () over-predict the LDPE conductivity data in a couple regions (0-7 hr and 7-9 hr) and underpredict in the region of 1.-0 hr mentioned previously. Figures and show that both fits over-predict the LDPE data in the polarization region. This is because the dispersive term dominates there and over-predicts the data (Figure 1). Using King: PHYS 0 Project August 1, 017

! values for αdisp and σ!"#$ that better fit the region from 1.- hr was attempted. This resulted in a fit using () that under-predicted in the polarization region, which allowed for altering the modeled conductivity using () and also attempting to use a three-polarization fit with (). However, this change in the dispersive term resulted in disagreement of up to 0% between the modeled conductivity, for both () and (), in the region of -.8 hr. The change in values for the dispersive term also produced a value for αdisp that did not agree within error with the value for αtrans. Therefore, while this change did produce an improved accuracy in the polarization region for models using () and (), it decreased the accuracy of modeled conductivity, for both () and (), in the region from hours to τtransit by up to 0%. For those reasons, it was decided that the values given for the dispersive terms in Table 1 should be the ones used in this experiment because they produced the most accurate overall modeled conductivity. III. Discussion and Conclusions Figures 1, 8, and show the model of conductivity in () fits all three data sets well. This can be seen by inspection of these percent fractional residual plots. Also, using the smoothed conductivity and Figures 17,, and 7, it is apparent that () is a very accurate model of conductivity for these materials. However, Figures 1, 9, and show that () does not fit the conductivity well in the polarization region of the data. The three-polarization model of () increases the accuracy of the modeled conductivity in unirradiated PI and radiated PI to ±% for unirradiated PI (Figure 1) and ±% for radiated PI (Figure 1) in the polarization region of the conductivity data. But, LDPE is fit just as well by (), without any polarization, as by () (see Figures and ). This implies that the polarization processes taking place differ based on material. Furthermore, in [8], it is stated that, though LDPE has a non-polar structure, fast polarization times are evident in its measured conductivity using the CVC method. This study would suggest that the initial curve, or the polarization region of the measured conductivity (Figure 0) does not have a steep curve due to a polarization mechanism. This is suggested by Figures and, which indicate negligible contributions due to any polarization term in the modeled conductivity. However, this cannot be said conclusively because other attempts were made at fitting the LDPE conductivity data that did include polarization terms. These were accurate to within ±% in the polarization region, but decreased the accuracy by up to 0% in the interval between hr and.8 hr (τtransit). To determine the specific polarization processes, or lack thereof, will require additional experimentation and research. As shown in Figures and, neither () nor () fit the LDPE data as well in the 1. hr to 0 hr region. But this is believed to due to temperature fluctuations in the CVC chamber and the temperature dependence of the sample. Temperature fluctuations also appear to have affected the conductivity of radiated PI (Figures and ). The decreased accuracy of the models in () and () during this region of fluctuating temperature can be seen in Figure. The changes in conductivity due to King: PHYS 0 Project August 1, 017

changes in temperature were investigated further using the smoothed conductivity of unirradiated PI, radiated PI, and LDPE. Because the change in thickness and area should be negligible for the changes in temperature concerned (usually not more than 1. K) and because such changes should cancel each other in (1), it is believed that the changes in conductivity due to temperature must arise from changes in the applied voltage or the resulting current. To determine how temperature was causing the change in conductivity, graphs of current and voltage were compared to temperature graphs in regions of largest temperature fluctuations. 00. 00.0 99. Sample Temp (K) 99.0 98. 98.0 97. 97.0 9. 9.0 T W Th 10 10 10 10 1 1 1 00 0 0 FIG 0. Unirradiated PI sample temperature versus time. King: PHYS 0 Project August 1, 017

78.0 Applied Voltage Linear Fit 78. Applied Voltage (V) 78.0 78. 78.0 781. T W Th 10 10 10 10 1 1 1 00 0 0 FIG 1. Unirradiated PI applied voltage versus time. 0.0 Percent Fractional Residual Voltage (%) 0.0 0.0 0.00-0.0-0.0-0.0-0.08-0. T W Th 10 10 10 10 1 1 1 00 0 0 FIG. Percent fractional residual linear fit unirradiated PI applied voltage versus time: linear-linear plot. King: PHYS 0 Project 7 August 1, 017

0x -1 18 1 1 1 Current (A) 8 0 - - T W Th 10 10 10 10 1 1 1 00 0 0 FIG. Unirradiated PI current versus time..0x -1 9. Smoothed Current (A) 9.0 8. 8.0 7. 7.0. 10 10 10 T W Th 10 1 1 1 00 0 0 FIG. Smoothed unirradiated PI current versus time. King: PHYS 0 Project 8 August 1, 017

1.9x -0 Smoothed Conductivity (ohm cm) -1 1.8 1.7 1. 1. 1. 1. T W Th 10 10 10 10 1 1 1 00 0 0 FIG. Smoothed unirradiated PI conductivity versus time: linear-linear plot. 97. 97. 97. Sample Temperature (K) 97.1 97.0 9.9 9.8 9.7 9. 9. 9. 9. 9. 9.1 Sun M T 0 0 0 0 1 10 FIG. Radiated PI sample temperature versus time. King: PHYS 0 Project 9 August 1, 017

779.0 Applied Voltage Linear Fit 778. Applied Voltage (V) 778.0 777. 777.0 77. Sun M T 0 0 0 0 1 10 10 Time (hr) FIG 7. Radiated PI applied voltage versus time. Percent Fractional Residual Voltage (%) x - x - x - 1x - 0x - -1x - -x - -x - 0 Sun M T 0 0 0 1 10 10 FIG 8. Percent fractional residual linear fit radiated PI applied voltage versus time: linear-linear plot. King: PHYS 0 Project 0 August 1, 017

x -1 0 8 Current (A) 0 18 1 1 1 8 Sun M T 0 0 0 0 1 10 10 FIG 9. Radiated PI current versus time. x -1 Smoothed Current (A) 0 18 1 1 1 0 Sun M T 0 0 0 1 10 10 FIG 0. Smoothed radiated PI current versus time. King: PHYS 0 Project 1 August 1, 017

Smoothed Conductivity (ohm cm) -1 x -1 0 8 0 8 0 Sun M T 0 0 0 0 1 10 10 FIG 1. Smoothed radiated PI conductivity versus time: linear-linear plot. 98.0 97.8 97. Sample Temperature (K) 97. 97. 97.0 9.8 9. 9. 9. 9.0 9.8 9. 0 Sat 0 FIG. LDPE sample temperature versus time. King: PHYS 0 Project August 1, 017

.0.9 Applied Voltage Linear Fit Applied Voltage (V).8.7..... 0 Sat 0 Time (hr) FIG. LDPE applied voltage versus time. x - Percent Fractional Residual Voltage (%) x - 1x - 0x - -1x - -x - -x - Sat 0 0 FIG. Percent fractional residual linear fit LDPE applied voltage versus time: linear-linear plot. King: PHYS 0 Project August 1, 017

x -1 0 Current (A) 0 0 0 0 Sat 0 0 FIG. LDPE current versus time. 0x -1 0 Smoothed Current (A) 0 0 0 Sat 0 0 FIG. Smoothed LDPE current versus time. King: PHYS 0 Project August 1, 017

0x -1 Smoothed Conductivity (ohm cm) -1 8 0 7 70 0 Sat 0 FIG 7. Smoothed LDPE conductivity versus time: linear-linear plot. Table. Temperature fluctuation effects on conductivity. Material Average change in T per day (K) Average % change in T per day Average % change in σ per day Average % change in σ per ΔT=1K LDPE 0.9±0. 0.9±0.07 9±7 ± Unirradiated PI 1.8±0. 0.±0.1 0± 11± Radiated PI 0.±0. 0.17±0.07 7±8 ±0 The current data for unirradiated PI, radiated PI, and LDPE were smoothed, using the same box algorithm as was used in smoothing the conductivity data to produce Figures, 0, and. Figure was smoothed using 00 points and is for unirradiated PI. Figure 0 was smoothed using 00 points as well and is for radiated PI. Lastly, Figure was smoothed using 0 data points and is for LDPE. Figures 0,, and show the sample temperatures during the time concerned for unirradiated PI, radiated PI, and LDPE, respectively. Figures 1, 7, and, which show the applied voltage with the fit linear voltage drift for unirradiated PI (Figure 1), radiated PI (Figure 7), and LDPE (Figure ), appear to show small changes in the voltage due to changes in temperature. The visible changes in voltage due to temperature are assumed to be the deviation in the voltage from the linear drift, which was due to battery discharge (compare Figures 0 and 1 for unirradiated PI, Figures and 7 for radiated PI, and Figures and for LDPE). Figures, 8, and show the percent fractional King: PHYS 0 Project August 1, 017

residual voltage (calculated using a generalization of ()) to more clearly show the deviation from linear voltage drift (Figure for unirradiated PI, Figure 8 for radiated PI, and Figure for LDPE). The displacement current due to these temperature fluctuations with time was calculated using the following equation I! =!!!!"!!" () where ID is the displacement current, A is the area of the electrode, d is the distance between the plates (here, the sample thickness), and!" is the derivative of the!" applied voltage with respect to time. First, the linear voltage drift was subtracted from the applied voltage data. Then, the maximum value of!" was calculated from!" the resulting graph. From this, the maximum value for ID was calculated for unirradiated PI, radiated PI, and LDPE was calculated. The maximum values for!"!" were as follows: 0.1 mv/hr for unirradiated PI, 0. mv/hr for radiated PI, and 1.1 mv/hr for LDPE. This resulted in the following maximum values for displacement current:.1x -1 A for unirradiated PI,.0x -1 A for radiated PI, and.00x -1 A for LDPE. Comparing these values of displacement current to the actual fluctuations in current shown in Figures, 0, and show that these displacement currents could in no way account for the changes in current shown in the data. However, Figures, 9, and show that the current fluctuates on almost the same hr temporal cycles as the changes in temperature (Figures 0,, and ). The smoothed current graphs show that the fluctuations in current are synchronized with fluctuations in temperature (Figure 0 for unirradiated PI, Figure for radiated PI, and Figure for LDPE). Furthermore, the smoothed current graphs show exactly the same fluctuations as are shown in the smoothed conductivity; the main difference between the conductivity and current graphs seems to be a scaling factor (compare Figures and for unirradiated PI, Figures 0 and 1 for radiated PI, and Figures and 7 for LDPE). Thus, the fluctuations in conductivity that seem to fluctuate with temperature are due mainly to fluctuations in current caused by changes in temperature. These changes in conductivity due to the temperature changes are different for unirradiated PI, radiated PI, and LDPE, as shown in Table. The change in conductivity for a 1K change in temperature for unirradiated PI and LDPE are the same within error, but the change in radiated PI is approximately eight times greater. This would indicate that the changes in conductivity, from the changes in current, are due to the fluctuations in temperature affecting the material and not the instrumentation. Assuming that the conductivity is proportional to a simple Boltzmann distribution, σ e!!!!!! (7) King: PHYS 0 Project August 1, 017