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Uncertainty Reduction in Self-Adaptive Systems

机译:自适应系统的不确定性减少

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摘要

Self-adaptive systems depend on models of themselves and their environment to decide whether and how to adapt, but these models are often affected by uncertainty. While current adaptation decision approaches are able to model and reason about this uncertainty, they do not consider ways to reduce it. This presents an opportunity for improving decision-making in self-adaptive systems, because reducing uncertainty results in a better characterization of the current and future states of the system and the environment (at some cost), which in turn supports making better adaptation decisions. We propose uncertainty reduction as the natural next step in uncertainty management in the field of self-adaptive systems. This requires both an approach to decide when to reduce uncertainty, and a catalog of tactics to reduce different kinds of uncertainty. We present an example of such a decision, examples of uncertainty reduction tactics, and describe how uncertainty reduction requires changes to the different activities in the typical self-adaptation loop.
机译:自适应系统取决于自己的模型及其环境,以决定是否以及如何适应,但这些模型通常受不确定性的影响。虽然当前的适应决策方法能够建模和对此不确定性的原因,但他们不考虑减少它的方法。这提出了改进自适应系统中决策的机会,因为减少了不确定性导致更好地表征系统的当前和未来状态和环境(以某种成本),这反过来支持更好的适应决策。我们提出了自适应系统领域不确定性管理的自然下一步的不确定性。这需要一种决定何时减少不确定性的方法,以及减少不同种类的不确定性的策略目录。我们提出了这样一个决定的示例,不确定减少策略的例子,并描述了如何减少不确定性如何变化在典型的自适应循环中的不同活动。

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