Quality of Service Measure for Bike Sharing Systems
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Date
2022-02-03
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Citation of Original Publication
H. I. Ashqar, M. Elhenawy, H. A. Rakha and L. House, "Quality of Service Measure for Bike Sharing Systems," in IEEE Transactions on Intelligent Transportation Systems, vol. 23, no. 9, pp. 15841-15849, Sept. 2022, doi: 10.1109/TITS.2022.3145669.
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Abstract
Bike sharing systems (BSSs) are becoming an
important part of urban mobility in many cities given that they are
sustainable and environmentally friendly. BSS operators spend
great efforts to ensure bike and dock availability at each station.
Measuring the quality of service (QoS) of each station and/or the
entire system is critical for efficient system operations. The
traditionally-known QoS measure reported in the literature is
based on the proportion of problematic stations, which are defined
as those with no bikes or docks available to users. This measure
neither exposes the spatial dependencies between stations nor does
it discriminate between stations in the BSS. Hence, we propose a
novel QoS measure, namely the Optimal Occupancy, in which: 1)
the temporal variations in arrival and pick up rates at individual
stations are considered; 2) the discriminative property of the
Optimal Occupancy is demonstrated using Analysis of Variance
(ANOVA) procedures; and 3) geo-statistics, which have not been
used before, are applied to explore the spatial Optimal Occupancy
variations and model variograms for spatial prediction. This study
uses an anonymized bike trip dataset from 34 stations in
downtown San Francisco to compare the traditionally-known QoS
measure and the proposed Optimal Occupancy measure. Results
reveal that the Optimal Occupancy is beneficial, outperforms the
traditionally-known QoS measure, and produces a better
prediction of the QoS at nearby locations. In addition, the Optimal
Occupancy can be used to predict candidate locations for the
introduction of new stations in an existing BSS