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Optimal mechanical sag estimator for leveled span overhead transmission line conductor

机译:用于平移跨度架空传输线导线的最佳机械凹槽估计

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Mechanical sag of the overhead transmission line (OTL) is a critical parameter for power system operation. However, remote locations of the conductor limit observability of sag. To monitor sag, distributed (DMS) or point measurement systems (PMS) are used. But, due to the limitation of DMS to use ruling span method, PMS is preferred. PMS requires sensors on every tower; as a result, sensor and data transmission requirements are high. This paper attempts to reduce the sensor requirement and estimate the sag in leveled span. To reduce the number of sensors and identify their location a linear integer programming based optimal sensor placement approach is proposed while keeping the redundancy intact. Using this, a reduced order, least-square based state estimator is proposed to estimate the sag in leveled span configuration. The estimator uses the conductor temperature and tension at one end of the span as input. Though, designed assuming ideal leveled span configuration, it is found to work for actual operating conditions. The performance of the proposed estimator is validated on the sag and tension data obtained with simulations on PLS-CADD TM. Moreover, to eliminate the bad data, sensitivity based bad data elimination approach is presented. It allows replacement of bad data with almost exact values. The results show the robustness of the proposed approach. (C) 2019 Elsevier Ltd. All rights reserved.
机译:顶部传输线(OTL)的机械凹陷是电力系统操作的关键参数。但是,导体的远程位置限制凹陷的可观察性。要监控SAG,使用分布式(DMS)或点测量系统(PMS)。但是,由于DMS的限制使用统治跨度方法,PMS是优选的。 PMS需要每个塔上的传感器;结果,传感器和数据传输要求很高。本文试图减少传感器要求并估算平整跨度的凹陷。为了减少传感器的数量并识别它们的位置,提出了基于线性整数编程的基于最佳传感器放置方法,同时保持冗余完整。使用此,提出了一种减少的顺序,基于最小二乘的状态估计器来估计级别跨度配置中的凹陷。估算器使用跨度的一端的导体温度和张力作为输入。虽然,设计假设理想的跨度配置,但它被发现用于实际操作条件。所提出的估计器的性能验证了在PLS-CADD TM的模拟中获得的凹凸和张力数据。此外,为了消除不良数据,提出了基于敏感性的不良数据消除方法。它允许使用几乎精确的值更换错误数据。结果表明了所提出的方法的稳健性。 (c)2019年elestvier有限公司保留所有权利。

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