基于不确定性条件下的矛盾信息,规划自主机器人的目标导向活动

V. Melekhin, M. Khachumov
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引用次数: 0

摘要

在自主机器人的知识表示模型中形成并存储有关问题环境(PE)中因机器人执行的操作而发生的各种情况的转化规律的矛盾信息的便利性得到了证实。之所以有这种需要,是因为在实践中不可能先验地为自主机器人构建和分配问题环境模型的详细正式描述。实际上,机器人不得不在先验的、不确定的问题环境中工作。这反过来又导致了这样一个事实:在相同的条件下,根据给定的问题环境模型,但考虑到其实际特点,机器人所执行的各种操作都能导致所需的结果,从而实现给定的目标。因此,在实际操作条件下,自主机器人可能会遇到 "矛盾 "信息的出现,即在相同条件下,根据给定的 PS 模型,以前有效的既定目标活动计划需要进行重大调整才能实现既定目标。对已形成的行为计划进行这样的调整,通常与机器人研究实际问题环境中情境的目的性转换模式和补充程序性知识有关。因此,使用与先验指定知识的不完整性相关的矛盾数据,为自主机器人提供了一个机会,以扩展关于先验未确定问题环境模式的信息,并在此基础上提高功能。为了解决这个问题,文章提出了一种典型元素结构,用于表示 "矛盾 "知识,包括各种基本行为,这种结构的开发使自主机器人能够通过在类似操作条件下执行各种动作来获得给定结果,同时考虑到描述当前问题环境情况的模型中未反映的各自特征。开发认知工具的目的是使自主机器人能够在不稳定问题环境的先验未确定条件下,根据给定的知识表示模型和自学程序,有效地组合规划目标行为的程序。一般来说,所考虑的用于规划自主机器人权宜活动的认知工具可以扩展其功能,并在此基础上适应复杂的先验不确定操作条件。
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Planning Goal-Directed Activities by an Autonomous Robot Based on Contradictory Information under Conditions of Uncertainty
The expediency of forming and storing in the knowledge representation model of an autonomous robot contradictory information about the laws of transformation of various situations in a problem environment (PE) that occur as a result of the actions performed by the robot is substantiated. This need is due to the fact that a priori it is not possible in practice to construct and assign to an autonomous robot a detailed formal description of a model of a problem environment. The robot is actually forced to function in a priori underdetermined problem environments. This, in turn, leads to the fact that under identical conditions, according to a given model of the problem environment, but taking into account its actual characteristics, various actions performed by the robot can lead to the required result to achieve a given goal. Consequently, in real operating conditions, an autonomous robot may encounter the emergence of "contradictory" information when, under identical conditions, according to a given PS model, a formed plan of goal-directed activity, which was previously effective, requires significant adjustments to achieve a given goal. Such an adjustment to the formed behavior plan is usually associated with the robot studying the patterns of purposeful transformation of situations in the actual problem environment and replenishing procedural knowledge. Thus, the use of contradictory data associated with the incompleteness of a priori specified knowledge provides an autonomous robot with the opportunity to expand information about the patterns of an a priori underdetermined problem environment and, on this basis, increase functionality. To solve this problem, the article proposes a structure of typical elements for representing "contradictory" knowledge, including various elementary acts of behavior, the development of which allows an autonomous robot to obtain a given result by performing various actions in similar operating conditions, taking into account their individual characteristics that are not reflected in the model describing the current problematic environment situations. Cognitive tools have been developed to provide an autonomous robot with the ability to organize an effective combination of procedures for planning goal-directed behavior based on a given model of knowledge representation and self-learning procedures in a priori underdetermined conditions of an unstable problem environment. In general, the considered cognitive tools for planning the expedient activity of an autonomous robot allow to expand its functionality and adapt on this basis to complex a priori underdetermined operating conditions.
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来源期刊
Mekhatronika, Avtomatizatsiya, Upravlenie
Mekhatronika, Avtomatizatsiya, Upravlenie Engineering-Electrical and Electronic Engineering
CiteScore
0.90
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0.00%
发文量
68
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