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Designing work breakdown structures using modular neural networks

机译:使用模块化神经网络设计工作分解结构

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In this paper, a framework which employs neural networks to plan the work breakdown structure of projects has been introduced. Using the proposed framework, a modular neural network has been developed to plan the structures of a limited project domain. The main concepts of the Andishevaran Methodology of Project Management (AMPM), including project control work breakdown structure (PCWBS), functional work breakdown structure (FWBS) and relational work breakdown structure (RWBS), have used to form the outputs of the model and its modules. The nature of projects, which have been represented by a limited set of attributes, are considered as the main inputs of the model. The independency from project domains is the main advantage of the proposed framework. The framework has been tested on a sample domain, and results showed that the planned work breakdown structures and activities have satisfied the expectations with different levels of validity. Therefore the model outputs could be considered as the primary plan of project structures which could be improved by some modifications.
机译:本文介绍了一种使用神经网络来计划项目工作分解结构的框架。使用提出的框架,已经开发了模块化神经网络来计划受限项目领域的结构。 Andishevaran项目管理方法论(AMPM)的主要概念,包括项目控制工作分解结构(PCWBS),功能工作分解结构(FWBS)和关系工作分解结构(RWBS),已用于形成模型和模型的输出。其模块。用有限的属性集表示的项目性质被视为模型的主要输入。与项目领域的独立性是建议框架的主要优势。该框架已在一个示例域中进行了测试,结果表明,计划的工作分解结构和活动以不同的有效性水平满足了期望。因此,模型输出可被视为项目结构的主要计划,可以通过一些修改加以改进。

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