Abstrakt
The work considers the problem of optimising the urban charging infrastructure as
a multi-channel mass service system with a queue. Queues at charging stations are due to the shortage of energy resources in the studied region. An algorithm has been developed and implemented to optimise a charging station for electric vehicles based on the criterion of meeting charging demand has been developed and implemented. At the same time, the main parameters of the system during peak hours were taken into account. The algorithm allows to determine the optimal number of chargers at the station depending on the target value of the demand for charging in the customer radius area. To implement the charging station optimisation model, taking into account the requirements of the entrepreneur, an algorithm has been developed to determine the average queue length based on dynamic data structures. The algorithm is based on an object-oriented modeling paradigm and supports the possibility of using variable statistical values that change during the day. The optimisation algorithm in the charging infrastructure development management system at the business level uses parameters obtained at the customer and society levels. Thus, the connection between the levels of management of the development of the urban charging infrastructure and the possibility of their consistent application has been proven.
Bibliografia
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