Iinrush-2P and Iinrush at Vpse-2P > 30V. Figure Iinrush-2P and Iinrush current and timing limits, per pairset in POWER_UP state

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1 Conens Simplifying Equaion Annex A The objecive from May 6 conribuion Annex B Derivaion of Equaion Annex C Does <49msec is OK?... 7 Simplifying Equaion Commen: In July meeing we have updaed Figure 33-6 and Equaion 33-5 D.8.. In Figure 33-6 here is ex missing marked in RED.. Equaion 33-5 can be simplified per he work done in: hp:// (See Annex A reference in his documen. Proposed Remedy. Updae Figure 33-6 wih he addiions marked RED: Ipor-P 5 A Tinrush-P Iinrush-P and Iinrush a Vpse-P > 3V PSE inrush maximum limi, I PSEIT-P ( Ipor Iinrush-P_max Iinrush_max A s (+ us (+ ms 5 ms 75 ms Figure 33-6 Iinrush-P and Iinrush curren and iming limis, per pairse in POWER_UP sae. Updae Equaion 33-5 as follows: Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page of 7

2 .: Replace a ( + from he 3 rd line wih: Imax+ ( 5 ( (.+. Delee from he where lis he a and b consans (hey are already embedded in he new equaion: a and ( 5 99 ( + b 5 a.3 Updae he definiion of in he where lis o: is he ime when IPor-P exceeds IInrush-P max he firs ime during POWER_UP. The range of is: 49 msec. End of baseline ex Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page of 7

3 Annex A The objecive from May 6 conribuion. See: hp:// Noe: I am expecing ha he new equaion above a ( + a ( 5 99 ( + b 5 a and Will be converged o he same equaion in D.7 i.e. Imax + (5-*(.-/99*^-5. Will be verified D.8. Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page 3 of 7

4 Annex B Derivaion of Equaion The following derivaion will address f( par which is marked in red: I PSEIT P ( Imax 5 f ( Imax < < < < ( + 6 ( + < < ( +. ( +. < <.75 From observaion, he value of equaion 33-5 in he range usec o msec in D.7 should be he same as in D.8 in he range ( + < < (. + Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page 4 of 7 wihou being dependen in since is slope described by f(, he maximum value (5A and he minimum value (Inrush-P_max or Iinrush which is described by will remain he same. is limied o 49msec (5msec maximum PD inrush ime duraion minus msec PD max ransien ime during PD inrush period. Derivaion f(a* +b as was in D.7 (prior adding he feaure ha Inrush ransien par above Im can be shif by : f ( a + b 5 a Imax a a ( 5 ( b Imax a f ( a + b ( 5 Imax ( ( 5 + Imax ( ( 5 ( f ( Im Imax+ f ( Imax+ ( 5 ( ax+ ( ( 5 (. 99 ( 5 (. 99

5 Simplifying f( as in D.8 by embedding he variables a and b in he main equaion: f( is allowed o shif by from o 49msec. From observaion he funcion developed D.7: f ( 5 (. ( Imax+ 99 can be modified o address he shif in ime (he quick way: f ( f ( f ( Imax+ Imax+ ( 5 (. ( ( 5 (.+ 99 Tesing: Imax.45, ( +usec. 99 ( 5.45 (.+ ( + A f ( Tesing: Imax.45, ( +msec. ( 5.45 (.+ ( +. f ( A 5 99 Deailed derivaion (OPTION : f ( a + b 5 a f ( Im ( 5 ( 5 (( + ( + ( ( 5 Imax a Imax ( ( 5 a + b + Imax ( ( 5 ( ax+ ( Imax a a b +. f ( Imax+ ( 5 ( ( ( ( 5 ( +. Imax+ ( 5 ( (.+ Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page 5 of 7

6 Deailed derivaion (OPTION The m used in D.8: In opion he only difference is ha b was derived using equaion ( while in opion i was derived by using equaion (. f ( a + b. 5 a. a b f ( Im Imax a ( 5 ( 5 (( + ( + ( ( 5 5 a 5 ( ( 5 ( 5 a + b + 5 ( ( ( 5 ( ax+ ( + f ( 5+ ( 5 ( ( ( + Tesing: Imax.45, ( +usec. ( 5 ( ( 5+ ( 5 ( ( + ( 5.45 ( + ( + A + f ( Tesing: Imax.45, ( +msec. f ( 5+ ( 5 ( 5+ ( ( (. + (.45A ( ( ( Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page 6 of 7

7 Annex C Does <49msec is OK? A PD may finish inrush period wihin msec and he inrush period may be delayed up o 49msec. Example: Iinrush Tinrush [A] [msec] C[uF] Vpd [V] Tinrush <msec. As a resul max 5msec-msec49msec Simplifying Equaion D.8. Sepember 6. Darshan Yair. Rev Page 7 of 7

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