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research-article

Sensitivity analysis of the influencing factors of parking lot selection based on BP neural network

Published: 01 January 2022 Publication History

Abstract

The driver’s selection process of parking lot will consider a variety of influencing factors, and consider different influencing factors for different travel purposes. In this paper, the driver’s travel purposes were divided into three categories according to the degree of emergency: emergency, routine and leisure. Four influencing factors of parking lot selection including walking distance, charge, parking index and parking convenience were selected, and ranked according to their sensitivity, and their sensitivity was analyzed by using the BP (back propagation) neural network, which provides a basis for the development of differentiated parking guidance and parking management measures to avoid the uneven parking due to random selection of parking lot and realize the maximum utilization of parking resources.

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              Information & Contributors

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              Published In

              cover image Journal of Computational Methods in Sciences and Engineering
              Journal of Computational Methods in Sciences and Engineering  Volume 22, Issue 1
              2022
              342 pages

              Publisher

              IOS Press

              Netherlands

              Publication History

              Published: 01 January 2022

              Author Tags

              1. Parking selection
              2. influencing factors
              3. sensitivity
              4. BP neural network CLC number

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