Improving elevator dynamic control policies based on energy and demand visibility

S. Chou, Aditya Budhi, A. Dewabharata, F. E. Zulvia
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引用次数: 5

Abstract

Elevator management system has received impressive attention due to its significance to transportation effectiveness for mid and high building. An important thing to improve elevator management system is to collect external information. This paper presents a method to collect number of passenger by using cameras and deep learning. By considering the status inside elevators, the directions of passenger movement, and the number of waiting passengers, the system occasionally allocates multiple elevators for a single hall call, which assists in reducing passengers' waiting time. This study applies deep learning to identify number of people queuing for an elevator. Data is gathered through some cameras to be analyzed with Region Based Convolutional Neural Network (R-CNN). Finally, we optimize the elevator dispatching rule by adding queuing data to the traditional elevator control system. Our goal is to minimize the average waiting time of the passengers.
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改进基于能源和需求可见性的电梯动态控制策略
电梯管理系统对中高层建筑的运输效率具有重要意义,因此受到了广泛的关注。完善电梯管理系统的一个重要环节是外部信息的采集。本文提出了一种利用摄像头和深度学习相结合的乘客数量采集方法。通过考虑电梯内的状态、乘客的移动方向和等待乘客的数量,系统偶尔会为一次大厅呼叫分配多部电梯,这有助于减少乘客的等待时间。本研究应用深度学习来识别排队等电梯的人数。通过一些摄像机收集数据,使用基于区域的卷积神经网络(R-CNN)进行分析。最后,在传统的电梯控制系统中加入排队数据,优化电梯调度规则。我们的目标是尽量减少乘客的平均等待时间。
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