BIKING ON MILWAUKEE S WEST SIDE. a historical analysis of bicycle shops near Washington Park. Spring. 2013t

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1 BIKING ON MILWAUKEE S WEST SIDE a hstorcal analyss of bcycle shops near Washngton Sprng S Graduate School of Urban Plannng I G C a p s t o n e P r o j e c 2013t MUnversty of Wsconsnlwaukee

2 The followng report was desgned by the followng graduate Urban Plannng & Geographc Informaton Systems (GIS) students at the Unversty of Wsconsn-Mlwaukee School of Archtecture & Urban Plannng: Jason Tldetzke, Urban Plannng Graduate Student Kate Rordan, Urban Plannng Graduate Student Kyle Engelkng, Urban Plannng Graduate Student Tom Welcenbach, GIS Certfcate Student For more nformaton about GIS at UW-Mlwaukee, please vst the followng webste: Records on hstorcal bke shop locatons n the Mlwaukee metro-area were researched and collected from the Mlwaukee Central Lbrary. For more nformaton about the lbrary and ts hstorcal archves, please vst the followng webste: The US Census and GIS data components for ths project were collected from the Amercan Geographcal Socety Lbrary (AGSL) at the Unversty of Wsconsn-Mlwaukee. For more nformaton on the AGSL and ts GIS data collecton, please vst the followng webste: A specal thanks to the followng ndvduals and organzatons: Professor Bll Huxhold, UW-Mlwaukee Keth Holt, Mlwaukee Bcycle Works Joyce Wtebsky, UW-Mlwaukee GIS Student Assstants, Amercan Geographcal Socety Lbrary UW-Mlwaukee School of Archtecture & Urban Plannng ACKNOWLEDGEMENTS GIS Capstone Project 1

3 Mlwaukee Bcycle Works s a non-proft organzaton located on Mlwaukee s west sde. Its vson s to use bcycles as tools for revtalzaton n ths neghborhood and to become a hub of actvty n the communty, provdng exctng, sustanable, and nnovatve bcyclebased programs for youth and adults. Mlwaukee Bcycle Works plans to acheve ths vson by ncreasng access to bcyclng and ts benefts through hands-on programs for youth and adults, volunteer projects, and a neghborhood bke shop that wll serve as a center of communty cyclng on Mlwaukee s West Sde. 1 Source for mage below s the Mlwaukee County Automated Mappng & Land Informaton System, otherwse known as MCAMLIS Ths project wll help Mlwaukee Bcycle Works to acheve ts msson by provdng nformaton on access to bcycles n the Washngton Neghborhood 1, the area n whch t focuses ts operatons. It wll examne the locaton of bcycle shops n the Mlwaukee area from 1983 to present, the percentage of workers age 16 and older that use bcyclng as ther man mode of transportaton and major race demographcs across the Cty. Ths project ams to determne whether or not there has been a change n both access to and use of bcycles n the project area. It wll also compare these measures to the other neghborhoods n Mlwaukee, Bay Vew and East Sde, that contan a larger number of bke shops or a hgher percentge of bcycle commuters to work. focuses ts operatons. It wll examne the locaton of bcycle Some of the man barrers for folks rdng bkes nclude where a bke fxed - Keth Holt, MBW Sprng INTRODUCTION to get

4 Data components for ths project were gathered from the Mlwaukee Central Lbrary, Amercan Geographcal Socety Lbrary (AGSL) and the US Census Bureau webste. Wth the excepton of the AGSL, all sources are free to the publc 1. Mlwaukee Central Lbrary - Drectores & Phone Books To determne the locatons of past and current Mlwaukee area bke shops, our group researched volumes of busness drectores datng back to In addton to Cty locatons, hstorcal bke shops outsde the Cty were found, such as Waukesha, Brookfeld, and South Mlwaukee. Drectores provde the most complete nformaton, such as address, owner, and number of employees 2, whle phone books only provde addresses. Therefore, drectores were preferred for collectng hstorcal nformaton on bke shops. However, the Mlwaukee Central Lbrary does not have drectores for every year. In a year where no drectory was avalable, a phone book was used to record a bke shop s name and address. Usng these resources, a data matrx was created for bke shop locatons from 1983 to present. If a bke shop was lsted subsequently and not on the orgnal lst, t was consdered a new bke shop. Conversely, f there was a bke shop from the orgnal 1983 lst not n the successve drectory, that bke shop was consdered closed n the year prevous to the drectory beng surveyed. Lastly, we revewed all bke shop locaton entres. Once all ncorrect addresses were modfed, the group began to collect the necessary GIS data. Amercan Geographcal Socety Lbrary - GIS Data To better understand the commutng habts as well as demographc shfts of Mlwaukee resdents over tme, ths project requred the use of US Decennal Census data for the followng decades: 1980, 1990, 2000 and For each decade, we receved geographc and tabular data for Mlwaukee County. These datasets provded nformaton on the two research tems of nterest to us - the number of workers 16 years and older who commute to work by bcycle and race demographcs for Mlwaukee County. US Census Amercan Factfnder - Census Data Other nformaton pertnent to the project was collected from the US Census Bureau webste 3. The US Census Bureau offers a varety of free mappng servces ncludng nteractve maps, searchable databases and demographc reports. 1 The AGSL can provde data to the publc but charges a fee. For more nformaton, vst the followng the webste 2 Owner and number of employee nformaton are usually found n drectores post For more nformaton on these webstes, look at the Informaton secton of ths booklet DATA ASSEMBLAGE GIS Capstone Project 3

5 Before the group could create maps, the GIS data, otherwse known as shapefles, collected from the AGSL and created from the drectores was best served n a geodatabase. A geodatabase s a database format, smlar to Mcrosoft Access, used n GIS programs for storng and managng GIS data. The geodatabase for ths project conssted of shapefles and tabular data from the AGSL. Buldng a Geodatabase In order to begn creatng maps, a collecton of shapefles must be gathered from varous sources and stored n a geodatabase. A geodatabase s created n ArcCatalog, a program for managng GIS data, by brngng n the prevously acqured shapefles. To begn creatng a geodatabase, use ths con: to connect to the folder where the project fles are beng stored. Once the fles are stored n ArcCatalog, rghtclck on a fle and clck add to geodatabase (clck the multple opton f convertng more than one shapefle to a geodatabase). Creatng the geodatabase allows the user keep track of data n a centralzed locaton such as a computer s local drve, flash drve, or CD for easer use when creatng maps n ArcMap. Upon the completon of the geodatabase, varous shapefles and tabular data can be added per the user s dscreton. Geocodng Hstorcal Bke Shop Locatons To map the pont data that s the bcycle shops, each shop must be located by an approprate locaton, such as a street address, usng ArcMap. Wthn ArcMap, the user uses the con to connect to the geodatabase. Snce the 1 The mage to the rght shows the Geocodng Addresses screen vewed when performng the descrbed functons above Sprng GIS Hstorcal Bke Shops database was done usng Mcrosoft Excel, the spreadsheet was brought n to ArcMap from the geodatabase. To properly geocode the addresses, a locaton attrbute, such as an address or lattude/longttude value, s needed n addton to the cty and state. When the spreadsheet s n ArcMap, rght-clck the spreadsheet and clck geocode addresses, the program wll then match the address n the spreadsheet wth the locatons real-world address. Some addresses may not match usng the geocodng spreadsheet and wll have to be fxed manually. Ths process, called revew geocoded addresses, s mportant to ensure all geocoded locatons represent the true locatons of the bke shops 1. When the geocodng process s complete, addtonal layers can be added from the geodatabase nto ArcMap to begn the creaton of the fnal maps. To do so, agan rght-clck the con and rght-clck on the selected shapefle and drag t onto the map. COMPONENTS

6 To understand how the data representng bke shops moved spatally through tme, the project allowed for the utlzaton of the ArcMap Tme Seres applcaton. Ths functon produces seperate maps for each specfed duraton of tme and combnes them nto a move or.gif fle 1. Ths allows us to better understand how the locatons of hstorcal bke shops changed over tme from 1980 to present tme. Frst, rght- clck on the layer n whch the tme functon wll be used, go to propertes, and clck on the tme tab. Clck the box enable tme on ths layer. Arrange the dropdown optons to mmc the pcture below. Clck apply and ok to go back to the man screen showng the map. Now that the tme functon s enabled and the parameters set, the tme slder can be utlzed by clckng the con n the toolbar above the map. The tme slder allows the user to vsualze the representaton of the pont data. Therefore only the bke shops open n a gven year wll be represented on the map. Google Map Fles The group also produced Google Earth fles, known as a.kmz fle, from the shapefles created prevously n ArcGIS. By creatng ths fle, a user can vew the data n the Google Earth or Google Maps program 2. Addtonally, ths fle can be kept n cloud servers such as Google Drve or Dropbox and be easly transferred nto the above programs. These programs are free to download and encourages Mlwaukee Bcycle Works to publcly share ths data wth resdents and other stakeholders. Further work n ths envronment wll allow Mlwauke Bcycle Works to create Google nteractve maps that can be put on the webste for the publc to vew. These fles allow the publc greater vsblty on what Mlwaukee Bcycle Works s attemptng to accomplsh n ts msson. GIS COMPONENTS GIS 1 A.GIF fle, otherwse known as a graphcs nterchange format, combnes multple mages nto a low-resoluton vdeo 2 The mage above shows an example of the hstorcal bke shop locatons n Google Earth Capstone Project 5

7 These seres of maps show the locatons of bcycle shops across the Cty of Mlwaukee and the surroundng area durng the 1980s, 1990s, 2000s, and 2010 present. The maps also show the percentage of workers age 16 and older who reported usng a bcycle as ther man mode of transportaton to work. These maps are accompaned by graphs that show US Census data for the racal makeup of the Cty of Mlwaukee, the zp code, and the Mlwaukee neghborhoods of Bay Vew and the East Sde. 1980s Durng the 1980s, the Mlwaukee area had 21 bcycle shops. These bke shops were farly well dstrbuted across the cty and ts surroundng area, though some smaller areas saw hgher concentratons. Mlwaukee s East Sde neghborhood boasted sx shops. Though there were no % Cty of Mlwaukee Race Makeup Whte Asan Black Hspanc bcycle shops n the zp code, the area drectly north of ts boundares had a cluster of seven shops. The 1980 US Census dd not ask respondents f they used a bcycle as ther commute mode, thus the map for the 1980s does not nclude mode share percentages. The whte populaton n the Cty of Mlwaukee was at 71.4% n 1980, and the black populaton was at 22.9%. The zp code had smlar proportons, wth 64.2% and 24.1%, respectvely. Bay Vew and the East Sde had much hgher percentages of whte populaton. Bay Vew had a 94.7% whte populaton and 0.1% black populaton, whle the East Sde had 91.8% and 3.3%, respectvely. Hspanc and Asan populatons were not sgnfcant n any of the areas. Washngton Neghborhood Race Makeup Percent of Cty Populaton % 44.8% 40.0% 17.3% Whte Black Asan Hspanc % 3.5% <1% Sprng SUMMARY OF RESULTS

8 1990s By the 1990s, several bcycle shops around Mlwaukee had closed. Durng ths decade, the Cty and ts surroundng area had 16 shops. Though some of the East Sde bke shops closed before 1990, new ones opened to replace them, and ths area stll had a hgher concentraton of shops wth sx. The zp code stll had no bke shops durng the 1990s, and the former cluster just to the north decreased from seven to four. Mlwaukee s East Sde showed the hghest concentraton of bcycle mode share n the 1990s, wth most Census tracts havng at least 1% of commuters usng a bcycle. Most of the zp code Census tracts showed no commute by bcycle, though a few tracts dd have hgher shares. The remander of the Mlwaukee area showed scattered pockets of hgher percentages of commutes by bcycle, wth the area around the Vllage of West Mlwaukee and a western porton of the Cty of West Alls also showng a hgh concentraton. The ctywde whte populaton dropped to 60.8% as of the 1990 Census. The black populaton ncreased to 30.2%. Hspanc populaton also rose to 6.3%. Whte populaton n the zp code decreased sgnfcantly to 41.5%, whle the black populaton ncreased to 44.7%. Populaton percentages overall dd not change much from 1980 to 1990 n Bay Vew and the East Sde. SUMMARY OF RESULTS GIS 2000s In the 2000s, the number of bcycle shops around the Cty ncreased to 17. Several of the bke shops on the East Sde closed durng the 1990s, but agan, these shops were replaced by new ones, most of whch stll exst today. Durng ths decade, the number of shops n ths neghborhood ncreased to seven. Three of the remanng bke shops north of the zp code had closed by the year 2000, but a new one opened just to the northwest of ths area. Mlwaukee s East Sde contnued to show a hgh percentage of commute by bcycle, wth percentages generally ncreasng from 1990 to The zp code stll showed several tracts wth no commutes by bke, though a tract on the south sde of ths area had greater than 3%. Agan, the Cty and ts surroundng area showed small pockets of hgh commute by bke percentages. The percentage of whte populaton n the Cty contnued to decrease from 1990 to 2000, reachng 45.5%. The percentage of black populaton contnued to ncrease slghtly to 36.9%. The percentage of Hspanc populaton nearly doubled from 1990 to 2000 to 12.0%. The percentage of whte populaton also declned n the zp code area to 32.3%, whle black populaton ncreased to 50.0%. Hspanc and Asan populaton percentages also ncreased to 5.7% and 8.1%, respectvely. Whte populaton decreased n Bay Vew to 85.1%, whle Hspanc populaton ncreased to 10.1%. The East Sde s whte populaton also decreased slghtly to 86.6%, whle other races dd not ncrease sgnfcantly. Capstone Project 7

9 2010 to Present By 2010, the number of bcycle shops n the Cty and the surroundng area had decreased to nne. All of these shops are currently open. The East Sde stll has the hghest concentraton of shops wth fve. Only Johnson s Cycle and Ftness remans near the zp code area. Overall, bcycle mode share ncreased throughout the Mlwaukee area ncreased as of the 2000 Census. The East Sde contnued to see hgh percentages. Areas on the southeastern sde of the Cty n neghborhoods lke Walker s Pont and Bay Vew began to show a large percentage of commute by bcycle. Mode share n the zp code also ncreased, partcularly the west sde of the zp code area, wth several tracts n the area showng at least 1%. Commute by bcycle was also hgh n several tracts mmedately to the west of the area. Both the proporton of whte populaton and black populaton n the Cty remaned steady from 2000 to 2010, wth 44.8% and 40.0%, respectvely. The Cty s Hspanc populaton ncreased to 17.3%. The populaton n the zp code area also dd not change much between 2000 and 2010, wth whte populaton at 29.5%, black populaton at 48.9%, Hspanc populaton at 6.3%, and Asan populaton at 8.6%. Whte populaton contnued to declne n Bay Vew, wth 74.4% n The Hspanc populaton ncreased slghtly n ths neghborhood to 13.3%. Populaton proportons on the East Sde dd not change much, remanng 84.6% whhte. Sprng SUMMARY Percent of Neghborhood Populaton Percent of Neghborhood Populaton % (Asan) 0.1% (Black) 1.9% (Hspanc) 1.1% (Asan) 94.7% 2.9% Bay Vew Neghborhood Race Makeup Whte Asan % 3.3% (Black) East Sde Neghborhood Race Makeup Black Hspanc 0 OF RESULTS Whte Asan 74.4% 13.3% % (Black) 84.6% 1.4% (Asan) Black Hspanc 4.6% (Black) 4.3% (Asan) 3.5% (Hspanc)

10 Ths project provdes the foundaton for addtonal analyses on bke shop locatons wthn the Washngton area and other neghborhoods n Mlwaukee. Future research can ncorporate a greater tme frame than 1980 to present. There are resources avalable at the Mlwaukee Central Lbrary to examne the hstorcal locaton of bke shops n other decades of the 20th Century. Whle our group focused on neghborhoods n proxmty to Washngton, data was gathered for the entre Mlwaukee-metro area, ncludng ctes such as Waukesha, Brookfeld, Cudahy, South Mlwaukee, Frankln, Menomonee Falls and Burlngton. Whle these places are outsde our focus area, addtonal research on hstorcal bke shop locatons n these areas could provde more context to the problem. Another opton s to compare Mlwaukee to other ctes nvolved wth smlar programmng. Ths study examned several neghborhoods wthn Mlwaukee, but t may be of nterest to compare Mlwaukee to other ctes to see f the trends found n ths study are also found n other ctes. Lastly, addtonal research may nvolve explorng consumer trends among cyclsts n Mlwaukee. Ths wll nvolve collaboraton between Mlwaukee Bcycle Works and several bke shop owners and programs n the cty who are wllng to share consumer data. Ths would provde Mlwaukee Bcycle Works a better understandng about the consumer trends n the Washngton neghborhood and other areas wthn ts operatonal boundary. FUTURE RESEARCH GIS Capstone Project 9

11 The followng references were extremely helpful n our study desgn. Should another group contnue ths type of analyss, we suggest the followng resources n provdng assstance to ther study: For nformaton on the US Census Bureau, please vst the followng webstes: US Census Bureau Man Webste - US Census Bureau Amercan Factfnder Search Engne - US Census Bureau Amercan Communty Survey - US Census Bureau TIGER GIS Fles - US Census Bureau Thematc Mapper - US Census Bureau Quckfacts - US Census Bureau On The Map - Where People Work & Lve Mappng Servce - For nformaton on GIS, ArcMap and other components, please vst the followng webstes: ESRI Man Webste - ESRI Tranng for GIS - tranng.esr.com/gateway/ndex.cfm ESRI GIS Term Dctonary - support.esr.com/en/knowledgebase/gsdctonary/browse For nformaton on local ntatves on data and GIS, please vst the followng webstes: Wsconsn State Cartographer s Webste - Mlwaukee Data Intatve provdes local GIS data and meetngs - They [Mlwaukee] have thngs off the ground. They seem to be dong thngs - Krstn Bennett, Cty of Mlwaukee Sprng INFORMATION

12 A MILWAUKEE BICYCLE WORKS & UWM p a r t n e r s h p W a s h s H n g t o n t o c B c y r l e Urban Plannng 793 s s c S h o p o n s P a r k a l L o c a t y N e g h b o r h o o d A n a l

13 WI-100 N WI-100 N N 92nd St N 92nd St S 16th St S 16th St I-43 I-43 W a u k e s h a C o u n t y N 124th St M l w a u k e e C o u n t y Wares Cycle Co 1320 S 108th St Year Open: 1940 Year Closed: 2009 Greenfeld Golf Course Greenfeld Cr-D Cr-Es E Curre Golf Course Zoo Fwy 18 Alls Bke Shop 9622 W Natonal Year Open: 1951 Cr-T Cr-T N Mayfar Rd UV 100 US-45 Blue Mound Golf & Country Club WI-59 W Cr-Nn W S 108th St UV 100 W Burlegh St Hansen 45 Mt Mary College Bcycle Welder 5401 W Center Year Open: 1984 Year Closed: 1987 W B llue Mound Rd WI-59 E I-894 I-894 Cr-Es Cr-Es W 894 Cr-Nn E N Menom on e e R ver Pky I 1 n = 1 mles Cr-T Cr-T S Dave's Bcycle Repar 3451 N 55th Year Open: 1985 Year Closed: 1990 Johnson's Cycle & Ftness Inc W North Ave W B lluemound Rd 94 W Wsconsn Ave WI-181 S W Belot Belot Rd Rd Mlwaukee Mle UV 59 WI-181 N UV 181 Dneen US-41 US-41 N N Wauwatosa WI-181 W O Connor S tt Cr-T Cr-T N Cr-U N W W Morgan Ave Mles I-94 West Alls Knn ck US-41 US-41 W State St c nn ve rr R Pky N 53rd St W Lsbon Lsbon Ave Ave Washngton Lagoon Doyne Cr-T Cr-T Mller WI-145 WI-145 S W Center St 41 W M W L ncolln Ave US-18 Jackson W Fores tt Home Ave ttche ll l S tt UV 145 N 37th St N 35th St West Mlwaukee UV 24 UV 36 N 30 tth S tt S 29th St W II --36 N WI-145 WI-145 N 27th St WI-57 WI-59 WI-241 N UV 241 Bkesmths 4628 W Burlegh Year Open: 1981 Year Closed: Wlson Copeland's Staton 4924 W Roosevelt Dr Year Open: 1988 Year Closed: 1991 Del Lamb Sport & Cycle Shop 3918 W Center St Year Closed: 1985 Kng Cyclery 2404 N 23rd Year Closed: 1989 Menomonee Rver W Perce St W Scott St W Greenfeld Ave Forest Home Cemetery Greenwood Cemetery UV 57 N 20th St S 20th St W Walnut St US-18 W US-18 E UV N 6th St W S ttatte Stt US --41 N S 6th St Wlson Cyclery 2033 W Howard Ave Year Closed: 2003 Mlwaukee Rver 43 I-94 E I-94 E S 1stt Stt Kern Knncknnc Rver WI-38 WI-38 UV 38 N Holton St WI-32 S Mlwaukee I-794 I Lake Pky UV 32 WI-32 WI-32 UV 32 Lake Lake Pky Pky WI-32 WI-32 N WI-32 Cy's Cycle Shop 1039 W Maple Year Closed: 1984 Ben's Cycle and Ftness 1018 W Lncoln Ave Year Open: 1930 Bob's Sport and Cycle 3680 SHowell Ave Year Closed: 1987 Frank's Cycle Shop 1812 E North Ave Year Closed: 1983 Pat's Bcycle & Repar Shop 1200 E Brady Year Closed: 1985 A Second Wnd 950 N Lncoln Memoral Dr Year Open: 1984 Year Closed: 1986 South Shore Bke Shop 2916 W Forest Home Ave Year Closed: 1983 S K nncknn c Ave WI-32 E Funland Bcycles 3547 N Oakland Ave Year Closed: 1983 Crterum Cycles 3488 N Cramer Year Closed: 1991 Lake Express Fry Ranbow Jersey 2613 E Hampshre St Year Closed: 1992 Bkesmths 1200 E Brady Year Open: 1986 Year Closed: 1992 Lake Mchgan Hstorcal Bke Shops: Mlwaukee Area Hstorcal Bcycle Shops Zp Code Source: ESRI, 2011

14 WI-100 S WI-100 S N 92nd St N 92nd St S 16th St S 16th St I-43 I-43 W a u k e s h a C o u n t y N 124th St M l w a u k e e C o u n t y Greenfeld Golf Course Greenfeld Cr-D Cr-Es E Curre Golf Course Zoo Fwy 18 Alls Bke Shop 9622 W Natonal Year Open: 1951 Cr-T Cr-T N Mayfar Rd UV 100 US-45 Blue Mound Golf & Country Club WI-59 W Cr-Nn W S 108th St UV 100 W Burlegh St Hansen 45 Mt Mary College W B llue Mound Rd WI-59 E I-894 I-894 Cr-Es Cr-Es W 894 Cr-Nn E N Menom on e e R ver Pky Dave's Bcycle Repar 3451 N 55th Year Open: 1985 Year Closed: 1990 Bkesmths 4628 W Burlegh Year Open: 1981 Year Closed: 1994 W B lluemound Rd Wares Cycle Co 1320 S 108th St Year Open: 1940 Year Closed: 2009 I 1 n = 1 mles Cr-T Cr-T S W Wsconsn Ave WI-181 S W Belot Belot Rd Rd Mlwaukee Mle UV 59 UV 181 WI-181 W O Connor S tt Dneen CJS Cycle Pro 2341 S 54th St Year Open: 1999 Year Closed: 2000 Cr-T Cr-T N Cr-U N W W Morgan Ave Mles 94 N 76th St US-41 US-41 N N Wauwatosa I-94 West Alls Knn ck US-41 US-41 Johnson's Cycle & Ftness Inc W North Ave W State St c nn ve rr R Pky N 53rd St Doyne Cr-T Cr-T WI-145 WI-145 S W Lsbon Lsbon Ave Ave 41 Mller W M W L ncolln Ave W Locust St US-18 Jackson W Fores tt Home Ave Copeland's Staton 4924 W Roosevelt Dr Year Open: 1988 Year Closed: 1991 UV 145 ttche ll l S tt N 35th St West Mlwaukee UV 24 UV 36 N 30tth Stt S 29th St W II --36 N WI-145 WI-145 N 27th St WI-57 WI Forest Home Cemetery Greenwood Cemetery WI-145 WI-145 N W Perce St W Scott St W Okllahoma Ave UV 241 UV 57 N 20th St 94 W Greenfeld Ave Wlson Cyclery 2033 W Howard Ave Year Closed: 2003 Wlson Kng US-18 W US-18 E Marquette Unversty North-South Fwy W Walnut St UV N 6th St W S ttatte Stt US --41 N S 6th St 43 I-94 E I-94 E S 1stt Stt WI-38 WI-38 UV 38 N Holton St WI-32 S Kern Mlwaukee I-794 I-794 Lake Lake Pky Pky UV WI-32 WI-32 UV 32 WI-32 WI-32 N Bkesmths 1200 E Brady Year Open: 1986 Year Closed: 1992 Ben's Cycle and Ftness 1018 W Lncoln Ave Year Open: 1930 Lake Lake Pky Pky Best Bkes of Bayvew 2995 S Delaware Ave Year Open: 1991 Year Closed: 1994 S K nncknn c Ave WI-32 a l l D rr Memorr N Lncol l n Cory the Bke Fxer 2410 N Murray Ave Year Open: 1993 WI-32 E Crterum Cycles 1828 E Menlo Blvd Year Open: 1991 Year Closed: 1993 Crterum Cycles 3488 N Cramer Year Closed: 1991 Ranbow Jersey 2613 E Hampshre St Year Closed: 1992 Bkesmths 2865 N Murray Ave Year Open: 1990 Lake Mchgan Workers Age 16 and Older: Percent Bke to Work Lake Express Fry Hstorcal Bcycle Shops Zp Code % Less than 1% 1% - 2% 2% - 3% Greater than 3% Source: U.S. Census Bureau ( ) ESRI, 2011

15 N 92nd St N 92nd St S 16th St S 16th St I-43 I-43 W a u k e s h a C o u n t y N 124th St M l w a u k e e C o u n t y 18 Wares Cycle Co 1320 S 108th St Year Open: 1940 Year Closed: 2009 Greenfeld Golf Course Greenfeld Cr-D Cr-Es E Curre Golf Course Zoo Fwy Alls Bke Shop 9622 W Natonal Year Open: 1951 Cr-T Cr-T N Mayfar Rd UV 100 US-45 Blue Mound Golf & Country Club WI-59 W Cr-Nn W S 108th St W Burlegh St Hansen 45 Mt Mary College W B llue Mound Rd WI-59 E I-894 I-894 Cr-Es Cr-Es W 894 Benz Cyclery 2872 N 74th St Year Open: 2004 Year Closed: Inc 2473 S 84th St Year Open: 2004 Year Closed: 2005 Cr-Nn E N Menom on e e R ver Pky Cr-T Cr-T S W Wsconsn Ave W B lluemound Rd WI-181 S Mlwaukee Mle UV 59 WI-181 W O Connor S tt Dneen CJS Cycle Pro 2341 S 54th St Year Open: 1999 Year Closed: 2000 Cr-T Cr-T N Cr-U N W US-41 US-41 S S Knn ck US-41 US-41 Johnson's Cycle & Ftness Inc W North Ave UV 100 UV 24 I 1 n = 1 mles W Belot Belot Rd Rd UV 181 W Morgan Ave Mles 94 N 76th St Wauwatosa I-94 West Alls W State St c nn ve rr R Pky N 53rd St Washngton Lagoon Doyne Cr-T Cr-T W Lsbon Lsbon Ave Ave 41 Mller W M W L ncolln Ave WI-145 WI-145 S W Locust St W Wrght St US-18 W Fores tt Home Ave Jackson UV 145 W Center St ttche ll l S tt N 35th St West Mlwaukee UV 36 N 30tth Stt S 29th St W II --36 N WI-145 WI-145 N 27th St WI-57 WI-59 WI-241 N UV Menomonee Rver Forest Home Cemetery Greenwood Cemetery UV 57 N 20th St WI-145 WI-145 N W Perce St W Scott St W Greenfeld Ave S 20th St Wlson Truly Spoken Cycles 833 E Center St Year Open: 2009 Kng W Walnut St US-18 W US-18 E Marquette Unversty UV N 6th St W S ttatte Stt US --41 N S 6th St Mlwaukee Rver 43 I-94 E I-94 E S 1stt Stt Kern Knncknnc Rver WI-38 WI-38 UV 38 N Holton St WI-32 S I-794 I-794 UV 32 WI-32 WI-32 al WI-32 WI-32 N N Lncolln Memor r Mlwaukee 794 Wlson Cyclery 2033 W Howard Ave Year Closed: 2003 UV 32 l Drr Bkers 1011 W Perce St Year Open: 2007 Year Closed: 2008 WI-32 Ben's Cycle and Ftness 1018 W Lncoln Ave Year Open: 1930 C4 BMX 2660 S Knncknnc Ave Year Open: 2002 Year Closed: 2004 Lake Lake Pky Pky S K nncknn c Ave Bkesmths 2865 N Murray Ave Year Open: 1990 Cory the Bke Fxer 2410 N Murray Ave Year Open: 1993 Crank Daddy's Bcycle Works 2170 N Prospect Ave Year Open: 2003 Eastsde Cycle 2031 N Farwell Ave Year Open: 2007 Year Closed: 2008 Mlwaukee Bke and Skate Rental 1750 N Lncoln Memoral Dr Year Open: 2003 WI-32 E Lake Express Fry Lake Mchgan Workers Age 16 and Older: Percent Bke to Work Hstorcal Bcycle Shops Zp Code % Less than 1% 1% - 2% 2% - 3% Greater than 3% Source: U.S. Census Bureau ( ) ESRI, 2011

16 WI-100 S WI-100 S N 92nd St N 92nd St S 16th St S 16th St I-43 I-43 W a u k e s h a C o u n t y N 124th St M l w a u k e e C o u n t y Curre Golf Course Zoo Fwy 18 N Mayfar Rd UV 100 US-45 W Burlegh St Blue Mound Golf & Country Club Hansen 45 Mt Mary College W B llue Mound Rd N Menom on e e R ver Pky W Wsconsn Ave W B lluemound Rd N 76th St UV 181 Dneen US-41 US-41 S S Wauwatosa WI-181 US-41 US-41 Johnson's Cycle & Ftness Inc W North Ave W State St N 53rd St W Lsbon Lsbon Ave Ave Washngton Lagoon Doyne 41 WI-145 WI-145 S US-18 UV 145 W Locust St W Center St W Wrght St N 35th St N 30tth Stt WI-145 WI-145 N 27th St UV 57 N 20th St WI-145 WI-145 N Kng US-18 E Marquette Unversty Menomonee Rver Truly Spoken Cycles 833 E Center St Year Open: 2009 US-18 W 43 W Walnut St Mlwaukee Rver W S ttatte Stt N Holton St WI-32 S Kern al WI-32 WI-32 N N Lncolln Memor r Mlwaukee UV 32 l Drr WI-32 Bkesmths 2865 N Murray Ave Year Open: 1990 Cory the Bke Fxer 2410 N Murray Ave Year Open: 1993 Crank Daddy's Bcycle Works 2170 N Prospect Ave Year Open: 2003 Mlwaukee Bke and Skate Rental 1750 N Lncoln Memoral Dr Year Open: 2003 Lake Mchgan 94 WI-181 S W O Connor S tt I-94 Mller WI-57 I-794 I-794 Greenfeld Golf Course Greenfeld Cr-D Cr-Es E WI-59 W Alls Bke Shop 9622 W Natonal Year Open: 1951 Cr-Nn W Cr-T Cr-T S 108th St WI-59 E I-894 I-894 Cr-Es Cr-Es W 894 Cr-Nn E Cr-T Cr-T S Mlwaukee Mle UV 59 Cr-T Cr-T N Cr-U N W Knn ck UV 100 UV 24 I 1 n = 1 mles W Belot Belot Rd Rd W Morgan Ave Mles West Alls c nn ve rr R Pky Cr-T Cr-T West Mlwaukee W M W L ncolln Ave W Fores tt Home Ave ttche ll l S tt Jackson UV 36 S 29th St W II --36 N WI-59 WI-241 N UV 241 W Perce St W Scott St W Greenfeld Ave Forest Home Cemetery Greenwood Cemetery S 20th St Wlson UV 59 US --41 N S 6th St 43 I-94 E I-94 E S 1stt Stt Knncknnc Rver WI-38 WI-38 UV UV 32 WI-32 WI-32 Ben's Cycle and Ftness 1018 W Lncoln Ave Year Open: 1930 Bgfoot Bke and Skate 2482 S Knncknnc Ave Year Open: 2010 Lake Lake Pky Pky S K nncknn c Ave WI-32 E Workers Age 16 and Older: Percent Bke to Work Lake Express Fry Current Hstorcal Bcycle Shops Zp Code % Less than 1% 1% - 2% 2% - 3% Greater than 3% Source: U.S. Census Bureau ( ) ESRI, 2011

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