Retrieving the similar solutions from the historical case base for new design requirements is the first step in mechanical part redesign under the context of case-based reasoning. However, the manual retrieving method has the problem of low efficiency when the case base is large. Additionally, it is difficult for simple reasoning algorithms (e.g., rule-based reasoning, decision tree) to cover all the features in complicated design solutions. In this regard, a text2shape deep retrieval model is established in order to support text description-based mechanical part shapes retrieval, where the texts are for describing the structural features of the target mechanical parts. More specifically, feature engineering is applied to identify the key structural features of the target mechanical parts. Based on the identified key structural features, a training set of 1000 samples was constructed, where each sample consisted of a paragraph of text description of a group of structural features and the corresponding 3D shape of the structural features. RNN and 3D CNN algorithms were customized to build the text2shape deep retrieval model. Orthogonal experiments were used for modeling turning. Eventually, the highest accuracy of the model was 0.98; therefore, the model can be effective for retrieving initial cases for mechanical part redesign.
翻译:从历史案例基础中为新的设计要求从新设计要求获取类似解决办法的历史案例基础,这是在基于案例的推理范围内机械部分重新设计机械部分的第一步;然而,人工检索方法在案件基础庞大的情况下存在低效率问题;此外,很难使用简单的推理算算法(例如基于规则的推理、决策树)来涵盖复杂设计解决办法中的所有特征;在这方面,建立了一个文本2shape深度检索模型,以支持基于文字描述的基于文字描述的机械部分形状检索,其文本用于描述目标机械部件的结构特征。更具体地说,采用了特征工程,以确定目标机械部件的关键结构特征。根据所确定的关键结构特征,设计了一个由1000个样本组成的培训组,其中每个样本由一组结构特征的文字说明段落和相应的结构特征的3D形状组成。为此,对RNN和3DCNN的算法进行了定制,以建立文本2shapeep深度检索模型。Ordogona实验用于模拟转动。最后,模型的最高准确性是0.98;因此,对机械性案例进行重新设计。