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Context-redefined language synthesis for energy consumption prediction using data from mixed remote sensors types

机译:使用来自混合远程传感器类型的数据的能耗预测的上下文重新定义语言合成

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This paper deals with the design and application issues of context-redefined computer languages for new information technologies. The discussion touches upon these languages implementation problems for intelligent learning agents (ILA), applied for solving the behavior prediction tasks for resource consumption in communal services. The article deals with the second problem in particular. The approach consists in the application of context-redefined language and its support system for problem solution. We focus on principal unpredicted changing of source function algorithms. Built-in context-redefined computer language is an essential tool for this kind of algorithm support. The main part of the intelligent learning agent is performance element. The performance element operates according to the current algorithm, which is described by means of built-in context-redefined language. The main idea of built-in language synthesis is to use main parts of the algorithm for ILA components with proper modification by means another algorithms and context connection. Due to this connection, the original algorithm can be changed directly or indirectly in the process of ILA functioning. We have to extract changing parts of component algorithms and organize proper interaction between every part and the context, which can be changed directly or indirectly. Required adaptive algorithm variation takes place on the base of obtained knowledge. At the same time, the algorithm must be implemented quickly, and the language must be simple and clear. The algorithm efficiency is based on flexibility and modifiability of the language. General constructions of the built-in context-redefined language have been demonstrated with proper comments.
机译:本文涉及用于新信息技术的上下文重新定义计算机语言的设计和应用问题。讨论涉及这些语言的语言实现智能学习代理(ILA)的方法,用于解决公共服务中资源消耗的行为预测任务。文章特别涉及第二个问题。该方法包括应用上下文重新定义的语言及其支持系统解决问题解决方案。我们专注于源函数算法的主要不可预测的变化。内置上下文重新定义的计算机语言是这种算法支持的重要工具。智能学习代理的主要部分是性能元素。性能元件根据当前算法操作,该算法由内置上下文 - 重新定义语言描述。内置语言综合的主要思想是使用算法的主要部分是ILA组件的主要修改方法是另一个算法和上下文连接。由于这种连接,原始算法可以在ILA运行过程中直接或间接地改变。我们必须提取组件算法的更改部分,并在每个部分和上下文之间组织适当的交互,可以直接或间接更改。所需的自适应算法变化在获得知识的基础上进行。同时,必须快速实现算法,语言必须简单明了。算法效率基于语言的灵活性和可修改性。已经对内置的上下文 - 重新定义语言的一般结构进行了适当的评论。

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