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Parameter Adaptive Multimodal Optimization and its Application in Smart Lighting.

机译:参数自适应多峰优化及其在智能照明中的应用。

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摘要

In many engineering applications exact models of underlying physical phenomena are not available and design and control strategies are difficult to develop. Uncertain measurements and unpredictable disturbances further complicate the systems design. Often multiple solutions in the design space must be explored and evaluated. In the proposed research, a novel approach to multimodal optimization (Speciated Parameter Adaptive Differential Evolution, or SPADE) is developed and evaluated to address these challenges. Specifically, the SPADE algorithm is applied to a set of systems design problems in the emerging area of smart lighting systems design.;Differential evolution is a class of evolutionary optimization methods that has been successful in a variety of difficult multimodal problem sets. Recently, the JADE algorithm has been developed in our laboratory and provides the capability to adapt algorithm control parameters to a range of different objective function characteristics at different phases of the evolutionary search. JADE has been successful in solving high dimension multimodal optimization problems, and was awarded first place in an international competition. The SPADE algorithm considered in this research is a further refinement of JADE, and introduces the principle of speciation in order to find multiple likely solutions to large multimodal problems. In SPADE, the population evolves into different species corresponding to clusters of candidate solutions. Separate species evolve in parallel and converge to multiple regions of the search space. The speciated populations are guided by the Minimum Description Length (MDL) principle that minimizes the complexity of the data set representation. Adaptive crossover between species further supports flexibility of the search process.;This thesis is focused on the application of the SPADE family of algorithms to the design of "smart" lighting systems that meet objectives for efficiency, productivity, and health. In this approach, the requirements and constraints are expressed in terms of characteristics of the light field. The light field is considered in general terms as a five-dimensional map representing the light irradiance (related to the perceived brightness of the light) and the directional characteristics of the light rays. The five-dimensional light field is reconstructed by means of discrete sensor sampling and estimation. Our approach to light field analysis utilizes the ray tracing simulation program to generate a simulated representation of the high dimensional data. In addition, the program is used to simulate a basic angular light sensor that could be used in experimental studies and control implementations. The estimation is achieved by the Kriging spatial estimation technique. In this research, we utilize the color sensor to carry out experimental studies of five-dimensional light field reconstruction and light source configurations design. The five-dimensional light field is set as the target, and the resulting problem space is high dimensional and multimodal with respect to the configuration and parametric characteristics of light sources. The outcome of this research demonstrates and evaluates the capability of the SPADE algorithm to design a configuration of light sources in the smart space testbed room to meet specified requirements.
机译:在许多工程应用中,无法获得潜在物理现象的精确模型,并且难以开发设计和控制策略。不确定的测量结果和不可预测的干扰进一步使系统设计复杂化。通常,必须探索和评估设计空间中的多种解决方案。在提出的研究中,开发并评估了一种新的多模式优化方法(指定参数自适应差分进化或SPADE),以应对这些挑战。具体而言,将SPADE算法应用于智能照明系统设计的新兴领域中的一组系统设计问题。差异演化是一类演化优化方法,已在各种困难的多峰问题集中获得成功。最近,JADE算法已在我们的实验室中开发出来,并提供了在进化搜索的不同阶段使算法控制参数适应一系列不同目标函数特征的能力。 JADE已成功解决高维多模态优化问题,并在国际比赛中获得第一名。本研究中考虑的SPADE算法是对JADE的进一步改进,并引入了物种形成原理,以便为大型多峰问题找到多种可能的解决方案。在SPADE中,种群演变成与候选解决方案簇相对应的不同物种。单独的物种并行进化并收敛到搜索空间的多个区域。指定的总体遵循最小描述长度(MDL)原则,该原则最大程度地减少了数据集表示的复杂性。物种之间的自适应交叉进一步支持了搜索过程的灵活性。本文主要研究SPADE系列算法在满足效率,生产率和健康要求的“智能”照明系统设计中的应用。在这种方法中,要求和约束条件是根据光场的特性来表达的。一般将光场视为代表光辐照度(与光的感知亮度有关)和光线的方向特性的五维地图。五维光场通过离散传感器采样和估计来重建。我们的光场分析方法利用光线跟踪模拟程序来生成高维数据的模拟表示。此外,该程序还用于模拟基本的角度光传感器,该传感器可用于实验研究和控制实现。通过克里格空间估计技术来实现估计。在这项研究中,我们利用颜色传感器进行了五维光场重建和光源配置设计的实验研究。以五维光场为目标,相对于光源的配置和参数特性,问题空间是高维的和多峰的。这项研究的结果证明并评估了SPADE算法在智能空间试验台中设计光源配置以满足特定要求的能力。

著录项

  • 作者

    Huang, Zhenhua.;

  • 作者单位

    Rensselaer Polytechnic Institute.;

  • 授予单位 Rensselaer Polytechnic Institute.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 179 p.
  • 总页数 179
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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