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Decision-Theoretic Group Elevator Scheduling

机译:决策理论群电梯调度

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摘要

We present an efficient algorithm for exact calculation and minimization of expected waiting times of all passengers using a bank of elevators. The dynamics of the system are represented by a discrete-state Markov chain embedded in the continuous phase-space diagram of a moving elevator car. The chain is evaluated efficiently using dynamic programming to compute measures of future system performance such as expected waiting time, properly averaged over all possible future scenarios. An elevator group scheduler based on this method significantly outperforms a conventional algorithm based on minimization of proxy criteria such as the time needed for all cars to complete their assigned deliveries. For a wide variety of buildings, ranging from 8 to 30 floors, and with 2 to 8 shafts, our algorithm reduces waiting times up to 70% in heavy traffic, and exhibits an average waiting-time speed-up of 20% in a test set of 20,000 building types and traffic patterns. While the algorithm has greater computational costs than most conventional algorithms, it is linear in the size of the building and number of shafts, and quadratic in the number of passengers, and is completely within the computational capabilities of currently existing elevator bank control systems.
机译:我们提出了一种有效的算法,用于精确计算和最小化使用一排电梯的所有乘客的预期等待时间。系统的动力学由嵌入在移动电梯轿厢的连续相空间图中的离散状态马尔可夫链表示。使用动态编程有效地评估链,以计算未来系统性能的度量标准,例如预期的等待时间,并在所有可能的未来方案中进行平均。基于此方法的电梯组调度程序大大优于基于最小代理标准(例如,所有轿厢完成其分配的交付所需的时间)的传统算法。对于范围从8到30层,轴数为2到8的各种建筑物,我们的算法将交通繁忙时的等待时间减少了多达70%,并且在测试中平均等待时间加快了20% 20,000种建筑物类型和交通模式的集合。尽管该算法比大多数常规算法具有更高的计算成本,但它在建筑物大小和竖井数量上是线性的,在乘客数量上是平方的,并且完全在当前现有电梯组控制系统的计算能力之内。

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