The design or simulation analysis of special equipment products must follow the national standards, and hence it may be necessary to repeatedly consult the contents of the standards in the design process. However, it is difficult for the traditional question answering system based on keyword retrieval to give accurate answers to technical questions. Therefore, we use natural language processing techniques to design a question answering system for the decision-making process in pressure vessel design. To solve the problem of insufficient training data for the technology question answering system, we propose a method to generate questions according to a declarative sentence from several different dimensions so that multiple question-answer pairs can be obtained from a declarative sentence. In addition, we designed an interactive attention model based on a bidirectional long short-term memory (BiLSTM) network to improve the performance of the similarity comparison of two question sentences. Finally, the performance of the question answering system was tested on public and technical domain datasets.
翻译:特殊设备产品的设计或模拟分析必须遵循国家标准,因此,在设计过程中可能有必要反复查阅标准的内容;然而,传统的以关键词检索为基础的问答系统很难准确回答技术问题;因此,我们使用自然语言处理技术设计压力容器设计决策过程的问答系统;为解决技术问题回答系统培训数据不足的问题,我们建议了一种方法,根据几个不同层面的宣示性句生成问题,以便从声明性句中获取多对问答。此外,我们设计了一个基于双向短期短期记忆(BILSTM)网络的互动关注模型,以改进两个问题句相似性比较的性能。最后,对问题回答系统的性能进行了公共和技术域数据集测试。