Syntactic Analysis for Decision-making Support System in Engineering-Procurement-Construction (EPC) Field

Sujin Choi, S. Choi, seung-yeab Lee, Eul-Bum Lee
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Abstract

The Engineering-Procurement-Construction (EPC) field is one of the complex industries that span the entire project cycle from bidding to engineering, construction, operations and maintenance (O&M). However, most EPC companies are exposed to contract-related risks during bidding or project execution period due to lack of data-based systematic decision-making system within limited time. In particular, in the client-supplied bidding document (ITB) in the EPC project, the client tends to pass the risk to the contractor. Therefore, when the client is participating in the bidding phase of a project, to analyze the contract (ITB) within a limited time and detect the presence or severity of risk sentence or clauses is of utmost importance. To analyze and detect the risk clauses of the bidding documents, professional experience and knowledge of the bidding documents is required, and it takes a lot of time and efforts to analyze and respond to the bidding documents that require complex sentences and expertise. In this study, it was performed as a preliminary step toward building an engineering decision support system. When conducting the EPC project, the items that could be risky were conceptualized by converting into a data base, and the main risk syntax and were constructed for algorithm. Text information was extracted from the bidding document (ITB) using syntax matching and named entity recognition technology for risk extraction, allowing users to systematically analyze and make a clear decision. In this study, research team applied to AI technology in EPC risk analysis especially phrase matcher and named-entity recognition (NER). Critical Risk Check Which is rule-based algorithm using phrase matcher method automatically extracts converts toxin clauses into a database. This Module contains 4steps as unstructured data Standardization, Pre-processing, Risk Database, Matching Algorithms. Terms Frequency Module using NER Model and EPC risk data was created in a similar syntax and converted into a JSON file. This package module identifying the frequency and location of the entity in the contract. The NER techniques can extract similar phrases of risky keywords and phrases. Also, can be demonstrated with domain characteristics such as location, general proper nouns as a frequency Image visualization. Through the Modules to be provided on decision-making support system as a cloud service. For the future works, research team improve the decision-making support system to present risk standards and semantic verification package.
工程-采购-建设(EPC)领域决策支持系统句法分析
工程-采购-施工(EPC)领域是一个复杂的行业,涵盖了从招标到工程、施工、运营和维护的整个项目周期。然而,由于在有限的时间内缺乏基于数据的系统决策系统,大多数EPC公司在投标或项目执行期间都面临着合同相关风险。特别是在EPC项目中客户提供的招标文件(ITB)中,客户倾向于将风险转嫁给承包商。因此,在客户参与项目投标阶段时,在有限的时间内分析合同(ITB),发现风险判决或条款的存在或严重程度是至关重要的。分析和发现招标文件的风险条款,需要有专业的经验和知识,分析和回应需要复杂句子和专业知识的招标文件,需要花费大量的时间和精力。在本研究中,它是作为建立工程决策支持系统的初步步骤进行的。在进行EPC项目时,将可能存在风险的项目概念化,并将其转换为数据库,构造主要的风险语法和算法。采用语法匹配和命名实体识别技术从招标文件(ITB)中提取文本信息,进行风险提取,供用户系统分析,明确决策。在本研究中,研究团队将人工智能技术应用于EPC风险分析,特别是短语匹配器和命名实体识别(NER)。关键风险检查是一种基于规则的算法,采用短语匹配方法自动提取转换毒素子句并将其存入数据库。该模块包含非结构化数据标准化、预处理、风险数据库、匹配算法4个步骤。使用NER模型和EPC风险数据的Terms Frequency Module以类似的语法创建,并转换为JSON文件。此包模块识别合同中实体的频率和位置。NER技术可以提取风险关键词和短语的相似短语。此外,还可以用域特征如位置、一般专有名词等作为频率进行图像可视化。通过模块将决策支持系统作为云服务提供。针对未来的工作,课题组对决策支持系统进行了改进,提出了风险标准和语义验证包。
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