Energy-saving scheduling strategy for elevator group control system based on ant colony optimization

Jing-long Zhang, Jie Tang, Q. Zong, Jun-fang Li
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引用次数: 22

Abstract

Elevator group control scheduling is to dispatch every elevator to serve call requests from different floors based on some certain goal. It's a kind of typical combinatorial optimization problems. Ant colony algorithm is good at solving the discrete combinatorial optimization, its well global optimization ability and quick convergence velocity are both necessary to a scheduling algorithm. Moreover, reducing passengers' waiting and traveling time is the main focus of current dispatching algorithms, neglecting the energy consumed by the elevator system. So it's necessary to research on energy-saving algorithms. For the purpose of elevator group's energy-conservation run, the objective function of energy is built, ant colony model for elevator group control system is created, its optimization mechanism is figured out, and convergence of the algorithm is studied in this paper. Simulation results show the effectiveness of the strategy.
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基于蚁群优化的电梯群控系统节能调度策略
电梯群控调度是根据一定的目标,调度每一部电梯服务不同楼层的呼叫请求。这是一类典型的组合优化问题。蚁群算法擅长解决离散组合优化问题,其良好的全局寻优能力和快速的收敛速度是调度算法所必需的。此外,减少乘客的等待和出行时间是当前调度算法的主要关注点,而忽略了电梯系统所消耗的能量。因此,有必要对节能算法进行研究。以电梯群节能运行为目标,建立了能量目标函数,建立了电梯群控制系统的蚁群模型,研究了其优化机制,并对算法的收敛性进行了研究。仿真结果表明了该策略的有效性。
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