Anytime model regression

A. Várkonyi-Kóczy, T. A. Várkonyi
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引用次数: 1

Abstract

Regression-type techniques are widely used for system modeling and characterization. In many of the cases the characterizations are to be performed on-line to be able to support control actions and other decisions which are necessary for the operation. In autonomous time critical and embedded systems there are further requirements to be met. Robustness and flexibility in respect to the actual state of the system and its environment belong to this group because the available time, resource, and data conditions have a direct effect on the feasibility and quality of the modeling or characterization. An important expectation concerning the processing is to ensure continuous operation and to offer “immediate” results in certain (e.g. crisis) situations. Anytime tools are serious candidates to measure up to such purposes because they can always provide some kind of results even if abrupt changes, temporal shortage of computational power, and/or loss of some data occur in the system/environment. In this paper an anytime model regression technique is presented which can advantageously contribute to the modeling/characterization tasks.
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随时模型回归
回归型技术广泛用于系统建模和表征。在许多情况下,特征描述都是在线进行的,以便能够支持操作所需的控制行动和其他决策。在自主时间关键型和嵌入式系统中,还需要满足进一步的要求。关于系统及其环境的实际状态的健壮性和灵活性属于这一组,因为可用的时间、资源和数据条件对建模或表征的可行性和质量有直接影响。有关处理的一个重要期望是确保持续运行,并在某些情况下(如危机)提供“即时”结果。任何时间工具都是衡量这些目的的重要候选者,因为即使系统/环境中发生突然变化、计算能力暂时短缺和/或某些数据丢失,它们也总是可以提供某种结果。本文提出了一种随时模型回归技术,它有利于建模/表征任务。
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