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Event-triggered distributed algorithms for network optimization .

机译:事件触发的分布式网络优化算法。

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摘要

Many existing distributed algorithms for network optimization problems often rely on the fact that, if the communications between subsystems are frequent enough, then the state of the network will converge to its optimum asymptotically. This approach will generally incur large communication cost. This work investigates the use of event-triggered communication schemes in distributed network optimization algorithms. Under event triggering, each subsystem broadcasts to its neighbors when a local "error" signal exceeds a state dependent threshold. We use the network utility maximization (NUM) problem as an example to demonstrate our idea.;We first present an event-triggered distributed barrier algorithm and prove its convergence. The algorithm shows significant reduction in the communication cost of the network. However, the algorithm suffers from several issues which limit its usefulness. We then propose two different event-triggered distributed NUM algorithms, the primal, and the primal-dual algorithm. Both algorithms are based on the augmented Lagrangian methods. We establish state-dependent event-triggering thresholds under which the proposed algorithms converge to the solution of NUM. For the primal-dual algorithm, we consider scenarios when the network has data dropouts or transmission delay, and give an upper bound on the largest number of successive data dropouts and the maximum allowable transmission delay, while ensuring the asymptotic convergence of the algorithm. A state-dependent lower bound on the broadcast period is also given. Simulations show that all proposed algorithms reduce the number of message exchanges by up to two orders of magnitude when compared to existing dual decomposition algorithms, and are scale-free with respect to two measures of network size.;We then use the optimal power flow (OPF) problem in microgrids as a nontrivial real-life example to demonstrate the effectiveness of event-triggered optimization algorithms. We develop an event-triggered distributed algorithm for the OPF problem and prove its convergence. We use the CERTS microgrid model as an example power system to show the effectiveness of our algorithm. The simulation is done in MATLAB/SimPower and shows that our algorithm solves the OPF problem in a distributed way, and the communication between neighboring subsystems is very infrequent.
机译:解决网络优化问题的许多现有分布式算法通常依赖于以下事实:如果子系统之间的通信足够频繁,则网络状态将渐近收敛至其最佳状态。这种方法通常会产生较大的通信成本。这项工作调查了事件触发的通讯方案在分布式网络优化算法中的使用。在事件触发下,当本地“错误”信号超过依赖状态的阈值时,每个子系统都向其邻居广播。我们以网络效用最大化(NUM)问题为例来说明我们的想法。;我们首先提出一种事件触发的分布式障碍算法,并证明其收敛性。该算法显示出网络通信成本的显着降低。但是,该算法存在几个问题,这些问题限制了其实用性。然后,我们提出两种不同的事件触发式分布式NUM算法,即原始算法和原始对偶算法。两种算法都基于增强的拉格朗日方法。我们建立了状态相关的事件触发阈值,在该阈值下,所提出的算法收敛到NUM的解。对于原始对偶算法,我们考虑网络存在数据丢失或传输延迟的情况,并在确保算法的渐近收敛性的同时,对最大数量的连续数据丢失和最大允许传输延迟给出上限。还给出了广播周期的状态相关下限。仿真表明,与现有的双重分解算法相比,所有提出的算法都将消息交换的数量最多减少了两个数量级,并且相对于网络规模的两个度量而言都是无标度的;然后我们使用最优潮流(微电网中的OPF问题作为一个不平凡的现实生活示例,以证明事件触发的优化算法的有效性。我们为OPF问题开发了一种事件触发的分布式算法,并证明了其收敛性。我们使用CERTS微电网模型作为示例电源系统,以展示我们算法的有效性。仿真是在MATLAB / SimPower中完成的,表明我们的算法以分布式方式解决了OPF问题,并且相邻子系统之间的通信很少。

著录项

  • 作者

    Wan, Pu.;

  • 作者单位

    University of Notre Dame.;

  • 授予单位 University of Notre Dame.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 148 p.
  • 总页数 148
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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