首页> 外文会议>17th Anniversary of the International Simulatros Conference, Apr 16-20, 2000, Washington, D.C. >Using SPC Techniques to Interpret the Input Data-Stream To An Adaptive-Agent Discrete-Event Simulation Element
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Using SPC Techniques to Interpret the Input Data-Stream To An Adaptive-Agent Discrete-Event Simulation Element

机译:使用SPC技术将输入数据流解释为自适应代理离散事件仿真元素

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This papmarizes an application of the common statistical process control tools, which are traditionally used to manage and control the variability of a production process. In this research this permits an adaptive-agent in a discrete simulation experiment to evaluate an input data stream, determine if there is a statistically significant shift in the behavior of the population that generated the data stream, and subsequently direct succeeding discrete simulation elements to process entities in different ways. Issues to be addressed in later studies are identified and form a list of future research goals. In a recent paper presented at the 1999 Advanced Technologies Simulation Conference, this author examined some of the salient design issues in discrete-event simulation models containing an adaptive-agent. Essentially in models containing adaptive-agents, the arrival of an entity signals the model to assign attributes to that entity which can be tracked throughout the system, where ordering and routing of that entity can be defined by the system model, and where statistics such as count, utilization, cycle time, etc. Can be compiled about the entity. The term agent refers to a system element that is designed to take action on its own, selecting its action using information it chooses from a range of available options. Adaptive-agent system elements create new system behaviors in non-random ways with the goal of incrementally achieving a better fit to the requirements of its environment. The focus of this paper is to examine statistical criteria that adaptive-agent elements might use to determine which, from the range of options, it should choose and in this way change the behavior of the entire simulation model. Traditional time series analysis provides a valuable classification scheme to describe the components of an input data stream. These are a base level, a trend, a seasonal, and random or noise components. A common application of elementary tools of linear regression analysis augmented with an assessment of seasonality is often used to analyze the data with each data point being of equal importance. Conceptually, the analysis of data streams by adaptive-agents must be thought of in a different context where recent data points are most important and the "value" of data points diminishes with age. Specifically, an adaptive-agent element is not necessarily interested in a "forecast" of the value of the next data point rather the adaptive-agent must determine if the most recent data points come from a different population {for example from a different season} and subsequently needs to change the behavior of the simulation model. In other words, if the adaptive-agent senses that inputs to the system are coming from population A, it will instruct the simulation model to process arrivals in a certain way, if however it senses that inputs are coming from population B, it will instruct the simulation model to process the arrivals in a different way. The fundamental purpose of statistical process control tools is to determine if a production process has changed and is in fact generating items from a statistically different population. The traditional tools of X-bar, R, np, and c charts are used to make these determinations. Using these tools, including the work of Nelson {1985}, provides a means to analyze the input data stream to an adaptive-agent simulation element and thus furnish a hierarchy for the adaptive-agent to determine if and how it should alter the behavior of the simulation model. This paper describes the application of these tools in a simple simulation model of a production system containing a single adaptive-agent and it discusses the implications of this research in more complex simulation models containing multiple adaptive-agent elements. The short-term contribution of this research project is that it extends the use of well-known and proven SPC analysis tools in a new application and in a new context. For the
机译:这概括了通常用于管理和控制生产过程可变性的常规统计过程控制工具的应用。在这项研究中,这允许离散模拟实验中的自适应代理评估输入数据流,确定生成数据流的总体行为是否存在统计上显着的变化,并随后指导后续的离散模拟元素进行处理实体以不同的方式。确定了以后研究中要解决的问题,并形成了未来研究目标的列表。在1999年先进技术仿真会议上发表的最新论文中,作者研究了包含自适应代理的离散事件仿真模型中的一些突出设计问题。本质上,在包含自适应代理的模型中,实体的到来向模型发出信号,以向该实体分配属性,该属性可以在整个系统中进行跟踪,系统模型可以定义该实体的排序和路由,统计信息例如计数,利用率,周期时间等。可以针对实体进行编译。术语“代理”是指一种系统元素,旨在自行采取行动,并使用从一系列可用选项中选择的信息来选择其行动。自适应代理系统元素以非随机的方式创建新的系统行为,以逐步实现更好地适应其环境要求为目标。本文的重点是研究统计准则,自适应代理元素可以使用这些统计准则来确定应该从选项范围中选择哪种,并以此方式改变整个仿真模型的行为。传统的时间序列分析提供了一种有价值的分类方案,用于描述输入数据流的组成部分。这些是基本水平,趋势,季节以及随机或噪声成分。线性回归分析的基本工具的普遍应用是对季节性的评估,而通常被用来分析数据,每个数据点具有同等的重要性。从概念上讲,必须在不同的情况下考虑使用自适应代理对数据流进行分析,在这些情况下,最近的数据点最为重要,并且数据点的“值”会随着年龄的增长而减小。具体而言,自适应代理元素不一定对下一个数据点的值的“预测”感兴趣,而是自适应代理必须确定最新数据点是否来自不同的人群(例如,来自不同的季节)并且随后需要更改仿真模型的行为。换句话说,如果自适应代理感觉到系统的输入来自人口A,它将指示仿真模型以某种方式处理到达,但是如果感觉到输入来自人口B,它将指示仿真模型以不同的方式处理到达。统计过程控制工具的基本目的是确定生产过程是否已更改,并且实际上是否从统计上不同的总体中生成物料。 X-bar,R,np和c图表的传统工具用于进行这些确定。使用这些工具,包括尼尔森(Nelson)(1985)的工作,提供了一种手段,可以分析输入数据流到自适应代理模拟元素,从而为自适应代理提供层次结构,以确定它是否以及如何改变行为。仿真模型。本文介绍了这些工具在包含单个自适应代理的生产系统的简单仿真模型中的应用,并讨论了此研究在包含多个自适应代理元素的更复杂的仿真模型中的含义。该研究项目的短期贡献在于,它在新的应用程序和新的环境下扩展了对众所周知的SPC分析工具的使用。为了

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