Abstract

In order to deal with the uncertainties of wind power, wind farm and electric vehicle (EV) battery switch station (BSS) were proposed to work together as an integrated system. In this paper, the collaborative scheduling problems of such a system were studied. Considering the features of the integrated system, three indices, which include battery swapping demand curtailment of BSS, wind curtailment of wind farm, and generation schedule tracking of the integrated system are proposed. In addition, a two-stage multi-objective collaborative scheduling model was designed. In the first stage, a day-ahead model was built based on the theory of dependent chance programming. With the aim of maximizing the realization probabilities of these three operating indices, random fluctuations of wind power and battery switch demand were taken into account simultaneously. In order to explore the capability of BSS as reserve, the readjustment process of the BSS within each hour was considered in this stage. In addition, the stored energy rather than the charging/discharging power of BSS during each period was optimized, which will provide basis for hour-ahead further correction of BSS. In the second stage, an hour-ahead model was established. In order to cope with the randomness of wind power and battery swapping demand, the proposed hour-ahead model utilized ultra-short term prediction of the wind power and the battery switch demand to schedule the charging/discharging power of BSS in a rolling manner. Finally, the effectiveness of the proposed models was validated by case studies. The simulation results indicated that the proposed model could realize complement between wind farm and BSS, reduce the dependence on power grid, and facilitate the accommodation of wind power.

Highlights

  • According to China’s government planning, the installed capacity of wind farms will reach 200 GW in 2020 [1]

  • This paper focused on the collaborative scheduling of an integrated system formed by a wind farm and electric vehicle battery switch stations (EVBSSs)

  • Based on the historical data, we found thatdistribution the relative prediction error of wind power and battery switch demand is no more than

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Summary

Introduction

According to China’s government planning, the installed capacity of wind farms will reach 200 GW in 2020 [1]. In [22,23], the charging/discharging power of ESS was optimized day-ahead in order to mitigate the wind power fluctuations and improve the capability for wind power to track its desired schedule. Stages of day ahead and hour ahead For the former, it aims at maximizing the probability of operating index realization; the energy storage in each period is seen as the decision variable, and a day-ahead collaborative scheduling model is established for this stage based on the dependent-chance objective programming theory.

Operating Indices of the Integrated System
Index of Battery Swapping Demand Curtailment
Index of Wind Curtailment
Index of Generation Schedule Tracking
Dependent Chance Programming
Day-Ahead Collaborative Scheduling Model
Hour-Ahead Optimization Decision Model
Simulation Analysis
Actualoutput outputpower power of
Figures and clearly found that proposed
Findings
Conclusions
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