Planning Purposeful Activities Autonomous Intelligent Robot with Knowledge Update in Short-Term Memory

Q4 Engineering
V. Melekhin, M. Khachumov
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引用次数: 0

Abstract

The main problems associated with the creation of autonomous intelligent robots capable of performing various complex tasks in a priori undescribed unstable problematic environments, based on the processing of knowledge presented in an abstract way, are outlined. To store typical elements of an abstract knowledge representation model, the article recommends using long-term and short-term memory. Long-term memory with associative search and data retrieval is designed to permanently store information necessary for planning a variety of purposeful activities that provide the robot with the ability to solve various complex behavioral tasks. In short-term memory, submodels of knowledge representation are entered from long-term memory, which are necessary for solving the current task of a certain type in the short term, related to the fulfillment of the task formulated for the autonomous intelligent robot. At the same time, with each change in the type of the current task of behavior being solved by an autonomous intelligent robot, a corresponding update of knowledge stored in short-term memory is simultaneously carried out. Original constructions of typical elements of the model for representing abstract knowledge in the form of various behavioral skills, set regardless of a particular subject area, have been developed. This approach to building a knowledge representation model allows autonomous intelligent robots to adapt to the current operating conditions and, on this basis, organize purposeful activities in complex unstable problematic environments. Various tools and rules for processing abstract knowledge are proposed, which endow autonomous intelligent robots with the ability to eliminate the differences between the current and target situation of the problem environment both in terms of the values of structurally equivalent relations of the same name in them, and in the current states of objects in the environment. This, in turn, makes it possible to create intelligent problem solvers for autonomous intelligent robots for various purposes, capable of performing complex tasks in unstable a priori uncertain conditions of a problematic environment.
利用短时记忆中的知识更新规划有目的活动 自主智能机器人
文章概述了与创建自主智能机器人相关的主要问题,这些机器人能够在先验未描述的不稳定问题环境中执行各种复杂任务,并以处理抽象知识的方式为基础。为了存储抽象知识表示模型的典型元素,文章建议使用长期记忆和短期记忆。具有联想搜索和数据检索功能的长时记忆旨在永久存储规划各种有目的活动所需的信息,使机器人有能力解决各种复杂的行为任务。在短期存储器中,知识表征的子模型从长期存储器中输入,这些子模型是在短期内解决当前某类任务所必需的,与完成为自主智能机器人制定的任务有关。与此同时,随着自主智能机器人解决当前行为任务类型的每一次变化,存储在短期记忆中的知识也会同时进行相应的更新。以各种行为技能的形式表示抽象知识的模型的典型元素的原始结构已经开发出来,这些元素的设置不受特定主题领域的限制。这种建立知识表示模型的方法使自主智能机器人能够适应当前的操作条件,并在此基础上在复杂不稳定的问题环境中组织有目的的活动。我们提出了处理抽象知识的各种工具和规则,这些工具和规则赋予自主智能机器人消除问题环境的当前情况和目标情况之间的差异的能力,这种差异既体现在它们之间结构上等同的同名关系的值上,也体现在环境中物体的当前状态上。这反过来又使得为各种用途的自主智能机器人创建智能问题解决程序成为可能,使其能够在问题环境不稳定的先验不确定条件下执行复杂的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mekhatronika, Avtomatizatsiya, Upravlenie
Mekhatronika, Avtomatizatsiya, Upravlenie Engineering-Electrical and Electronic Engineering
CiteScore
0.90
自引率
0.00%
发文量
68
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