首页> 外文会议>Systems, Applications and Technology Conference, 2009. LISAT '09 >Improving elevator call time responsiveness via an artificial neural network control mechanism
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Improving elevator call time responsiveness via an artificial neural network control mechanism

机译:通过人工神经网络控制机制改善电梯呼梯时间响应能力

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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.
机译:电梯交通包括个人从其称为电梯的楼层到目的地楼层的运动。该项目旨在通过利用以下概念来提高电梯的呼叫时间响应性:交通流通常形成可定义的模式,这些模式可用于预测未来的交通流行为。已经开发了基于前馈神经网络的控制算法,该算法可以通过学习将一天中的时间与特定的呼叫位置相关联来近似电梯的呼叫模式。针对电梯呼叫的模糊模式对该算法进行了测试,在该模式中,随机生成的呼叫在一天的特定时间偏向特定楼层。当将10个此类模糊集的平均神经网络控制呼叫时间与每次呼叫后电梯返回第一层的典型情况进行比较时,观察到电梯呼叫时间响应能力提高了42%。因此建议,通过帮助确保电梯位于最有可能在个人推电梯之前被呼叫的位置,通过减少等待时间,机器学习启用的电梯控制系统可以通过减少等待时间来提高用户满意度。按钮。然而,通过以下事实可能进一步增强了这种算法的实用性:将电梯置于最可能的呼叫位置还可以节省大量的能源,因为电梯将需要更少的行程来接送潜在的乘客。

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