capital bikeshare: managing & balancing capacity to increase customer service
DESCRIPTION
Capital Bikeshare (CBS) is a self‐service public bike rental program in Washington, DC and Arlington, VA funded by several government entities such as Federal Highways Administration and Crystal City Business Improvement District. Within 2 months of its existence it has grown tomore than 5000 customers and finds itself in a tricky situation of managing capacity at its most frequented sites.TRANSCRIPT
Managing&BalancingCapacitytoIncreaseCustomerSatisfaction
G e o r g e t o w n U n i v e r s i t y
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PrabhdeepSaimbhiShyamVijayaraghavanJeremyS.PompJamieGrazianoDawnMarkovicsCapital Bikeshare (CBS) is a self‐service public bike rental
program in Washington, DC and Arlington, VA funded byseveral government entities such as Federal HighwaysAdministration and Crystal City Business Improvement
District. Within 2 months of its existence it has grown tomore than 5000 customers and finds itself in a trickysituationofmanagingcapacityatitsmostfrequentedsites.
EXECUTIVE SUMMARY
Our analysis of Capital Bikeshare’s (CBS) operations has led us to recommend that the firm implement
“CaBi Points”, a reward points system for its members as a means to increase customer satisfaction by
reducing docking demand at some of the most utilized stations during peak usage times throughout the
network by incentivizing consumers to redistribute bicycles on their own accord by offering them points
exchangeable for rewards and gift certificates from local Washington, DC metro area businesses. The
point system initiative is intended to increase customer satisfaction by increasing the likelihood that
member’s primary arrival docking location has capacity to dock their bike, while simultaneously
engaging its active members to participate in the bike-balancing solution, easing the demand on Alta for
bike redistribution, reducing operational CO2 emissions, and potentially adding an additional revenue
stream through advertising. Based on the data provided by CBS we were able to determine which bike
stations are likely to reach full capacity utilization and when they will do so. Given additional data over a
longer time period it is likely we would be able to more accurately model consumer usage trends.
Additionally, the CaBi Points system would allow CBS the flexibility to address capacity issues on a real-
time basis when needed, while also using historical data analytics to capture predictive behavior of its
members to address problem spots on an ongoing basis. Finally, we believe that the CaBi Points system
is the most cost effective way of addressing this problem and has the potential to increase the firm’s
profits through an innovative marketing agreement with local businesses.
HISTORY AND BACKGROUND: CAPITAL BIKESHARE
Capital Bikeshare is a self-service public bike rental program in Washington, DC and Arlington,
VA funded by several government entities such as Federal Highways Administration and Crystal City
Business Improvement District. It serves as an additional mode of transportation and utilizes the latest
technologies to facilitate user access and is structured to enhance the city's public transportation system.
Historically, the first self-service bike rental program started in 1998 in Rennes, France, and
subsequently, rapidly spread across Scandinavia and Spain. Washington, DC adopted its first bike share
program, SmartBikeDC, in 2008. The program had little reach with only about 100 bikes, 10 bike
stations, and operating only in the Washington, DC area. Capital Bikeshare, on the other hand, offers
some key features such as: higher quality bike, extensive fleet of 1,100 bikes, over 100 bike stations, and
increased service area including Arlington and Crystal City.
HOW IT CAPITAL BIKESHARE WORKS
A rider can purchase an annual, monthly or 24 hour membership. Annual and monthly
memberships can be purchased online in advance, while 24 hour membership can be purchased on-sight
at a CBS bike station. A member rider can go to any bike kiosk, 24 hours a day, 365 days a year, and
check out a bike. Riders can also access the CBS website to locate bike kiosks, and receive real time data
regarding the availability of bikes at each of the bike kiosks. Bike kiosks are located at various key
locations throughout the city. The bikes are locked using a proprietary technology, which allows each
bike to be safely stored when not in use. The borrowed bike is released using a key (for annual members)
or a pin-pad code (for 24 hour membership users). Upon completion of bike usage, the member can
return the bicycle to any CBS bike station.
COMPETITIVE LANDSCAPE
The only true bike share competitor to Capital Bikeshare is SmartBikeDC, which will soon be
completely defunct. It is currently unwinding its operations, and no longer issuing any new memberships.
Other indirect competitors to the Capital Bikeshare are the metro rail and bus systems (also a part of
DDOT), taxis, walking, and driving. While technically Metro and bus are competitors to CBS, CBS is
intended to enhance the traditional transportation options, not compete with them. Further, no other
commuting option offers the environmental and personal health benefits as bike riding.
CURRENT BUSINESS AND OPERATING STRATEGIES
Capital Bikeshare is a partnership between the District Department of Transportation (DDOT)
and the Arlington County, VA local government. Alta won the RPF to handle the operations and
management of the bicycles. The membership and usage fee schedule in [Table 1] shows the revenue
source for Capital Bikeshare. As noted in an interview with Chris Eatough, the BikeArlington Program
Manager, in the system’s second month of operations, there are currently over 5000 members (4,800
annual and 400 monthly) that provide revenues to cover about 50% of the expenses associated with daily
operations. The shortfall of cash flow to operate the system is offset by its funders’ help. The system is
expected to reach a break-even status with 15,000 annual members.
For day to day operations, Alta’s team of bike specialists works tirelessly to upkeep and maintain
the bike fleet, as well as to balance availability at each of the bike kiosks. Balancing presents a complex
operational dilemma, especially during peak hours, since during this time, the demand for bikes and
docking stations can often exceed the system’s capabilities, especially in prime locations, such as
Washington, DC’s downtown business district. While Alta does have a van that it uses to rebalance the
bikes, the efficiency of the van’s operations can be hindered by factors such as capacity (can only move
about 10 bikes at a time), and the van’s inability to move through the city at peak hours, due to traffic.
CHALLENGES AND ISSUES
CBS’s most difficult challenge is ensuring an all-around excellent customer experience at peak
time and as well as at other times. This includes users’ ability to locate a nearest bicycle, unlock it, use the
bicycle without a malfunction, and ultimately return the bicycle to a bike station that is close to the final
destination. It is the return of the bicycle that can have a severely negative impact on a customer’s
experience, and is the problem that we have been asked to address by Capital Bikeshare.
Chris Eatough, Program Manager, Capital Bikeshare, found that the most customer complaints
arise when the consumer attempts to return the bicycle to the rack, and finds that rack to be full. The
customer then has to relocate to the nearest location with an empty receptacle. Although this task of
finding an empty receptacle is made easier with the use of a button that the user can press on the signage
at the station, a mobile phone app, or via the company’s web page, it is nonetheless an inconvenience
especially when users have time sensitive schedules. Currently, customers are given an additional 15
minutes of time if they press the button because the station is full.
During the first two months of operation, a pattern seems to have developed among Bikeshare
users. It seems that many annual users are taking the bikes from near their residences in the outlying
neighborhoods of Washington, DC and Virginia, and then commuting to work downtown via the bicycles.
Customers often find the downtown station locations full during the peak morning commute time. As a
result, Alta has been attempting to relocate the bikes to the busy stations throughout periods of the day in
order to meet customer demand and then return then downtown for commuters to get back home after
work. All Capital Bikeshare rentals are recorded electronically; however, the organization has just begun
recording this data and has provided our team with the first three days’ worth of data to confirm this
assumption.
CBS acknowledges the utility of specialized software designed to aid it in adjusting capacity at
the bike stations; however, enough funding to pursue such advancements is currently unavailable.
Therefore, CBS is seeking another alternative that keeps in mind the “green” aspect of bike sharing as
well as having the ability to solve the bike balancing problem.
DATA ANALYSIS
To begin tackling the problem of bicycle and empty slot load-balancing throughout the
Washington DC metro area, our team obtained raw data from Chris Eatough, Program Manager at
BikeArlington. The raw data contained over 65,000 data entries and tracked the location of each station,
the number of bicycles at each station, and the number of empty bicycle docks at each station over a 3-
day period from October 19, 2010 through October 21, 2010. Data samples were taken every 5 to 15
minutes at each station. This sampling of data was used to carry out the remainder of the data-specific
analysis1.
Before we carry out our data analysis, it is important to point out that having no empty slots at a
dock is equally if not further harmful to consumer experience as having no bikes at all. Though it varies a
lot from region to region; there are some regions where lack of bikes during morning peak hours should
be avoided, especially in the outskirts where customers use bikes in heavy quantity to travel to downtown
in the morning for work and other reasons. On the other hand and perhaps more importantly, having no
empty slots at locations closer to downtown and market places in the morning translate into customers
waiting for a slot, which can be a potentially time sensitive situation. Special events and festivals also
present issues that require handling dock capacity in ways other than traditionally employed.
Our data synthesis began by determining the stations at which bicycle racks were either full or
empty and how often such occurrences happened. Through this methodology, we isolated key “problem
stations” that had frequent service failures (See Exhibit 1). In order to look at the relationship between
stations we then created a grid map (See Exhibit 2) and began performing a block-by-block analysis.
Comparing the problem stations to our grid map, we determined that blocks E3, E4, and F3 were having
particular problems meeting customer demand cycles.
Isolating block F3 for the purposes of starting analysis we took a closer look at the three stations
within our newly created zone; 20th and E Street NW Station, 19th and E Street NW Station, and Virginia
Ave. and 21st Street Station (See Exhibit 3). These three stations are each within 3 blocks from one
another. Extracting the bicycle count data for each station individually, we were then able to plot the
number of bicycles at each station over the 3-day period (See Exhibits 4a, 4b, and 4c). Comparing the
three stations, we noticed that all of the stations within the same block experienced a similar cyclical
1Itshouldbenotedthatonly3daysofdatawereavailabletobeanalyzedbyourteam.Theremainderoftheanalysissectionutilizesthesepointstodevelopaframeworkthatcanbeexpandedtoanalyzethesystemasawhole.Therefore,withthelimiteddataused,thisanalysisdrawsonlygeneralconclusionsabouttheinter‐stationrelationshipsandshouldbetakenmoreasananalysisprocedurerecommendationthananindepthstudy.
nature of bike usage, but that the Virginia Avenue station was the only station that was being filled up
entirely.
The data also points out to locations that require lesser number of bikes as the docks are close to
always full throughout the day. Managing this appropriately can help keeping lesser bikes in the day to
day operations and in turn minimize costs by reducing maintenance and upkeep costs. Not surprisingly,
most of these areas tended to be away from the city center.
The most filled up docks were located at locations such as: 12 & Newton St NE, 8th & H St NW,
and 4th & M St SW. [Exhibit 5] shows the list of locations with highest number of average bikes. Some
locations always remained relatively full while others in the list were full on an average during the day;
the ones that remained full forever or in the morning are marked red in the exhibit. For example, 12 &
Newton St NE docks were always full while 5th St & K St NW docks were relatively empty during the
working hours while quite full after 6 pm on an average. Also note that some stations such as Georgetown
Harbor / 30th St NW remained quite full in the morning but number of bikes dropped as the day went by.
Finally, through our analysis, we believe that the following will hold true:
1. General cycles will remain similar between stations within the same block.
2. In most cases, not every station in every problematic block will reach holding capacity during
peak periods.
3. The cyclicality suggests that users are using the bicycles on their way to and from work. The
current method used of utilizing trucks to remove bicycles at full station and redistribute them to
more underutilized stations is therefore problematic, as patrons who ride into work may be left
without a bicycle to ride home.
4. As ridership increases and new bicycle stations are installed along the outskirts of the served area,
congestion will worsen in the Central Business District and East of the White House.
5. As previously mentioned, a more in depth study over several weeks of data (and probably through
various seasons) is required to concretely identify under and over utilized stations and how to
handle demand fluctuations.
SOLUTION ANALYSIS
Several options were considered for encouraging a more optimal distribution of bicycles for
Capital Bikeshare. The solution strategies included adding bike storage capacity, shortening the supply
chain, subcontracting the bike balancing, and providing customer incentives for rebalancing the bikes.
Although all of the proposed solutions can effectively rebalance the bikes and thereby improve
customer service, the optimal solution must adhere to certain constraints in order to successfully
implement a viable short-term solution as membership in Capital Bikeshare continues to grow:
Major Constraints
• Time – Capital Bikeshare has grown quickly since their September launch. And in order to support
continued success, customer service should be improved quickly.
• Capital – As a public works project, there is little short-term additional capital available for new and
unplanned projects. Furthermore, the current capital is being devoted to expanding the network of
bicycles as opposed to focusing on profit-maximization.
• Space – There is limited space to install bike-share stations on the DC sidewalks and parking lots.
The chance of adding more capacity at each station is thus reduced.
Adding Capacity
Adding capacity can solve the problem of bike balancing by effectively increasing the number of
“bike slots” so a customer is much less likely to arrive at a full station. Three potential tactics for
increasing capacity were investigated:
1) Increase the existing infrastructure by adding bike slots to the “full” stations:
This tactic increases the number of bikes that can arrive at each stop. There is an ancillary cost of
removing a greater number of bicycles from circulation as more bicycles are docked all-day in the
business district while waiting for the commuters to return on their evening commute. This tactic
should be pursued in the long-term as greater numbers of member subscribe to Capital Bikeshare and
capacity is added to the system. Unfortunately, the space and capital constraints are violated,
implying that this is not an appropriate short-term solution.
2) Manned Stations
Introducing manned stations brings temporary increased capacity to business-district area bike
stations. A temporary manned station can operate during peak hours in order to store a greater number
of bikes. Unfortunately, it is subject to the same constraints as the above, and therefore not an ideal
solution – however it is an effective solution for temporary events such as festivals or rallies where
additional capacity is necessary.
3) Mobile Stations
A mobile station (possibly one built into a truck) can be posted downtown to dock bikes during
the morning rush hour, driven to tourist areas during business hours, then re-deposited in the
downtown areas for the return commute. This would be the ideal rebalancing solution if not for
the major time and capital constraints to develop the technology, and the capital constraints
required to purchase the infrastructure. Although this is a promising long-term solution for a
mature bike-sharing program, it is not an effective short-term solution for the current Capital
Bikeshare.
Shortening the Supply chain
Shortening the supply chain can result in less time in transit for bicycle rebalancing and maintenance,
thereby improving the existing balancing efficiency.
1) Institute maintenance / corral stations in downtown DC near the primary business districts
A nearby station allows bikes to be maintained while they are docked downtown while waiting
for the evening commuters. It also allows excess bike capacity to be removed during the morning
commute and added again in the evening without having to drive a van full of bikes across town and
through heavy traffic. Unfortunately, space and capital constraints are a big concern due to land rental
rates in downtown DC. Again, this is a potential long-term solution for a mature market, but not a
viable short-term solution for the current Capital Bikeshare.
Subcontracting active bicycle rebalancing
1) Subcontracting with formal agreements with the city bus system
Bikes can be placed in a trailer behind specific bus routes, or with independent contractors will
not necessarily solve the rebalancing problems, because they are subject to the same traffic
constraints that currently affect the four bicycle rebalancing vans. However, it can allow the
rebalancing of bikes to grow as Capital Bikeshare itself expands and adds to its network of bicycles.
Encouraging desired customer behaviors through incentives
Encouraging customer behavior through incentive programs does not violate any of the above
constraints and has been successful for other bike-sharing programs.
1) “Paying” customers with credits to encourage certain routes
The city of Paris uses this method to encourage users to bike uphill routes. Although the costs and
time for implementation would be small, there is an ancillary cost for this method. Specifically,
the marginal revenue for each usage would decrease. This method would be effective, but the
same results could be achieved through a points system that would not cause revenue reductions
for each “balancing” ride.
2) Live Points system to encourage specific routes, “CaBi Points”
The points system is an evolution of the above. Specifically, it allows Capital Bikeshare to encourage
and reward customers for choosing specific beginning and endpoints without losing the revenue from
each bike ride. Furthermore, it has an ancillary benefit – it provides opportunities for corporate
sponsorships and donations. Furthermore, although there would be some costs to implement the
system, they are relatively minimal compared to the other options presented. This is therefore the
optimal short-term solution to balancing the bikes.
IMPLEMENTATION PROCESS
We suggest the following steps to ensure successful implementation of the “CaBi Points” system.
1. Beta Test 1.0 with 10-20 members
a. Contact current members and offer the option for them to test the new system
b. Allocate $400 for rewards
c. Track the change in behavior from the participating members through data analysis,
survey, and phone interview, if possible.
d. Beta test will also help determine the appropriate level of gift/reward that would
change the member’s behavior
e. Did “CaBi Points” work?
2. Determine whether or not to proceed with Beta Test 2.0
3. Contact local businesses to establish marketing and advertising partnerships and secure
rewards for members
4. Beta Test 2.0 with 100 members attempting to gain further insight
5. Determine whether or not to proceed with full scale implementation or additional testing
EXAMPLE
Joe, a member of CBS, lives in Arlington, VA and works at the State Department. He rides a CaBi bike
to work Monday through Friday. He usually docks his bike at the CBS station at Virginia Ave. and 21st
Street NW, one of the most heavily utilized stations in the CBS network. However, today he noticed on
the CaBi website that he would get 10 “CaBi Points” if he docked the bike at the 19th & E St. station
instead. Joe enjoys Starbucks coffee and knows that this month’s reward is a $20 gift certificate at
Starbucks if he is able to accrue 100 points in total. Joe decides that walking an extra block or two is
worth if for $20 worth of coffee, which he can get doing this just 10 times. So he decides to change his
behavior for the reward thereby increasing the available capacity at the Virginia Ave & 21st Street station.
Julie a new member to CBS, who also works at the State Department, was recently frustrated when she
arrived at Virginia Ave & 21st Street in the morning before work and there weren’t any docks available at
the station. However, since the CaBi Points system was implemented she has noticed that she rarely runs
into this problem anymore and her level of anxiety about finding a parking spot has decreased.
Both Joe and Julie have increased levels of customer satisfaction as a result of the CaBi points system.
Behind the scenes Starbucks is benefitting from being associated with CBS’s green and healthy image.
CBS enjoys a servicing its members better while it increases its membership numbers based on positive
word of mouth recommendations from its members.
a.
Table 1: Capital Bikeshare Membership and Usage Fee Structures
MEMBERSHIP FEE
24 Hours $5
30 Days $25
Annual $75
USAGE FEE
0-30 Minutes FREE
31-60 Minutes + $1.50
61-90 Minutes + $3.00
Each Additional 30 Minutes + $6.00
Exhibit 1: Top 10 Stations with Service Failures
Station Name Number of Documented
Service Failures in 3 day
period
1 19th St & Pennsylvania Ave NW 331
2 19th & L St NW 289
3 US Dept of State / Virginia Ave & 21st St
NW
223
4 12 & Newton St NE 220
5 18th & M St NW 185
6 14th & D St SE 182
7 1800 Martin Luther King 179
8 17th & L Street NW 171
9 Florida Ave & R St NW 169
10 7th & Water St SW / SW Waterfront 148
Exhibit 3: Focused Analysis on Sector F3
F
3
3Stations
• 20th&ESt.NW
• VirginiaAve.&21st
• NW19th&ESt.NW
Exhibit 4a: Data Analysis of 20th and E Street NW Station
Raw Bikeshare Data Provided by Lance Schine, Chief Information Officer of DDOT
Exhibit 4b: Data Analysis of Virginia Ave and 21th Street NW Station
Raw Bikeshare Data Provided by Lance Schine, Chief Information Officer of DDOT
02468
101214
Num
berofBicycles
20th&EStreetNWBicycleUsage(Capacity=15)
NumberofBikes
0
2
4
6
8
10
Num
berofBicycles
VirginiaAve&21stStreetNWBicycleUsage(Capacity=11)
NumberofBikes
Exhibit 4c: Data Analysis of 19th and E Street NW Station
Raw Bikeshare Data Provided by Lance Schine, Chief Information Officer of DDOT
Exhibit 5: Locations with most number of bikes on an average
Locations Avg # of Bikes Avg # of Empty Docks
12 & Newton St NE 14.3 0.7 8th & H St NW 13.2 11.8 4th & M St SW 11.9 3.1 5th St & K St NW 11.3 7.7 Eastern Market - 7th & North Carolina Ave SE 11.1 3.9 14th & Harvard NW 11.0 8.0
14th & V St NW 10.9 8.1 Georgetown Harbor / 30th St NW 10.7 8.3 1st & M Street NE 10.6 4.4
USDA / 12th & Independence Ave SW 10.4 12.6
0
2
4
6
8
10
12
Num
berofBicycles
19thandEStreetNorthwestBycicleUsage(Capacity=11)
NumberofBikes