无代码人工智能:从文档和相关启发式中自动生成功能块图,用于上下文感知ML算法训练

O. Ogundare, Gustavo Quiros Araya, Yassine Qamsane
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引用次数: 4

摘要

工业过程工程和PLC程序开发传统上更倾向于功能框图(FBD)编程,而不是经典的命令式编程,如面向对象和函数式编程范式。随着统计学习理论或所谓的机器学习的主流成功,采用和试验“无代码”或“低代码”思想的势头越来越大,这正在重新定义我们为数字机器执行构建程序的方式。“无代码”的主要焦点是直接从一组需求文档或任何其他定义消费者或客户期望的文档中派生可执行程序。我们提出了一种方法,用于生成功能块图(FBD)程序,作为中间或最终工件,可以由目标系统从一组需求文档中使用约束选择算法执行,该算法从关联推荐系统的顶部绘制。结果表明,这种无代码生成模型是工业过程设计的可行选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
No Code AI: Automatic Generation of Function Block Diagrams from Documentation and Associated Heuristic for Context-Aware ML Algorithm Training
Industrial process engineering and PLC program development have traditionally favored Function Block Diagram (FBD) programming over classical imperative style programming like the object oriented and functional programming paradigms. The increasing momentum in the adoption and trial of ideas now classified as “No Code” or “Low Code” alongside the mainstream success of statistical learning theory or the so-called machine learning is redefining the way in which we structure programs for the digital machine to execute. A principal focus of “No Code” is deriving executable programs directly from a set of requirement documents or any other documentation that defines consumer or customer expectation. We present a method for generating Function Block Diagram (FBD) programs as either the intermediate or final artifact that can be executed by a target system from a set of requirement documents using a constrained selection algorithm that draws from the top line of an associated recommender system. The results presented demonstrate that this type of No-code generative model is a viable option for industrial process design.
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