Improving Elevator Call Time Responsiveness via an Artificial Neural Network Control Mechanism

被引:0
|
作者
Echavarria, Jhonatan [1 ]
Frenz, Christopher M. [1 ]
机构
[1] CUNY, New York City Coll Technol, Dept Comp Engn Technol, Brooklyn, NY 11201 USA
来源
LISAT: 2009 IEEE LONG ISLAND SYSTEMS, APPLICATIONS AND TECHNOLOGY CONFERENCES | 2009年
关键词
Control Systems; Machine Learning; Neural Networks;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Elevator traffic comprises the movement of individuals from the floor from which they called the elevator to their destination floor. This project seeks to improve elevator call time responsiveness by utilizing the concept that traffic flows generally form definable patterns that can be used to predict future traffic flow behaviors. A feed-forward neural network-based control algorithm has been developed that can approximate elevator call patterns by learning to associate time of day with specific call locations. This algorithm was tested against fuzzy patterns of elevator calls in which the randomly generated calls were biased towards certain floors at certain times of day. When the average neural network controlled call times of 10 such fuzzy sets were compared to the typical scenario of the elevator returning to the first floor after each call, a 42% improvement in elevator call time responsiveness was observed. It is thereby suggested that a machine learning enabled-elevator control system could result in increased user satisfaction by reducing wait times by helping to ensure that the elevator is at the most likely place the elevator will be called from prior to an individual even pushing the call button. The utility of such an algorithm is likely further enhanced, however, by the fact that having the elevator in the most likely call location can also lead to significant energy savings in that the elevator will need to travel less to pick up prospective passengers.
引用
收藏
页码:39 / 41
页数:3
相关论文
共 50 条
  • [31] Artificial neural network real-time process control system for small utilities
    Zhang, Qing J.
    Shariff, Riyaz
    Smith, Daniel W.
    Cudrak, Audrey
    Stanley, Stephen J.
    JOURNAL AMERICAN WATER WORKS ASSOCIATION, 2007, 99 (06): : 132 - 144
  • [32] Improving Intrusion Detection System using Artificial Neural Network
    Albahar, Marwan Ali
    Binsawad, Muhammad
    Almalki, Jameel
    El-Etriby, Sherif
    Karali, Sami
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (06) : 578 - 588
  • [33] Improving the ionospheric model accuracy using artificial neural network
    Sidorenko, K. A.
    Kondratyev, A. N.
    JOURNAL OF ATMOSPHERIC AND SOLAR-TERRESTRIAL PHYSICS, 2020, 211
  • [35] Using an Artificial Neural Network for Improving the Prediction of Project Duration
    Lishner, Itai
    Shtub, Avraham
    MATHEMATICS, 2022, 10 (22)
  • [36] Artificial neural network: Improving the quality of breast biopsy recommendations
    Baker, JA
    Kornguth, PJ
    Lo, JY
    Floyd, CE
    RADIOLOGY, 1996, 198 (01) : 131 - 135
  • [37] Real-Time Destination-Call Elevator Group Control on Embedded Micro controllers
    Hiller, Benjamin
    Tuchscherer, Andreas
    OPERATIONS RESEARCH PROCEEDINGS 2007, 2008, : 357 - 362
  • [38] Predicting Safety Solutions via an Artificial Neural Network
    Stohl, Radek
    Stibor, Karel
    IFAC PAPERSONLINE, 2019, 52 (27): : 490 - 495
  • [39] Improving Neural Network Robustness via Persistency of Excitation
    Sridhar, Kaustubh
    Sokolsky, Oleg
    Lee, Insup
    Weimer, James
    2022 AMERICAN CONTROL CONFERENCE, ACC, 2022, : 1521 - 1526
  • [40] Improving Neural Network Interpretability via Rule Extraction
    Schnyder, Stephane Gomez
    Despraz, Jeremie
    Pena-Reyes, Carlos Andres
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2018, PT I, 2018, 11139 : 811 - 813