Kidambi Raju Sekar, Ramaswamy Seethalakshmi, Eid Marwa M, Gopalan Sathiamoorthy, Alhussan Amel Ali, Sukumar Arunkumar, Khafaga Doaa Sami
School of Computing, SASTRA Deemed University, Thanjavur 613401, India.
Department of Maths, SASHE, SASTRA Deemed University, Thanjavur 613401, India.
Sensors (Basel). 2023 Aug 7;23(15):7011. doi: 10.3390/s23157011.
Artificial intelligence (AI) systems are increasingly used in corporate security measures to predict the status of assets and suggest appropriate procedures. These programs are also designed to reduce repair time. One way to create an efficient system is to integrate physical repair agents with a computerized management system to develop an intelligent system. To address this, there is a need for a new technique to assist operators in interacting with a predictive system using natural language. The system also uses double neural network convolutional models to analyze device data. For fault prioritization, a technique utilizing fuzzy logic is presented. This strategy ranks the flaws based on the harm or expense they produce. However, the method's success relies on ongoing improvement in spoken language comprehension through language modification and query processing. To carry out this technique, a conversation-driven design is necessary. This type of learning relies on actual experiences with the assistants to provide efficient learning data for language and interaction models. These models can be trained to have more natural conversations. To improve accuracy, academics should construct and maintain publicly usable training sets to update word vectors. We proposed the model dataset (DS) with the Adam (AD) optimizer, Ridge Regression (RR) and Feature Mapping (FP). Our proposed algorithm has been coined with an appropriate acronym DSADRRFP. The same proposed approach aims to leverage each component's benefits to enhance the predictive model's overall performance and precision. This ensures the model is up-to-date and accurate. In conclusion, an AI system integrated with physical repair agents is a useful tool in corporate security measures. However, it needs to be refined to extract data from the operating system and to interact with users in a natural language. The system also needs to be constantly updated to improve accuracy.
人工智能(AI)系统越来越多地用于企业安全措施,以预测资产状态并建议适当的程序。这些程序还旨在减少维修时间。创建高效系统的一种方法是将物理维修代理与计算机化管理系统集成,以开发智能系统。为了解决这个问题,需要一种新技术来帮助操作员使用自然语言与预测系统进行交互。该系统还使用双神经网络卷积模型来分析设备数据。对于故障优先级排序,提出了一种利用模糊逻辑的技术。这种策略根据缺陷造成的损害或费用对其进行排序。然而,该方法的成功依赖于通过语言修改和查询处理不断提高口语理解能力。要实施此技术,需要采用对话驱动的设计。这种学习依赖于与助手的实际经验,为语言和交互模型提供有效的学习数据。这些模型可以经过训练以进行更自然的对话。为了提高准确性,学者们应该构建和维护公开可用的训练集来更新词向量。我们提出了带有Adam(AD)优化器、岭回归(RR)和特征映射(FP)的模型数据集(DS)。我们提出的算法被赋予了一个合适的首字母缩写DSADRRFP。同样的提议方法旨在利用每个组件的优势来提高预测模型的整体性能和精度。这确保了模型是最新且准确的。总之,与物理维修代理集成的人工智能系统是企业安全措施中的一个有用工具。然而,它需要改进以从操作系统中提取数据并以自然语言与用户进行交互。该系统还需要不断更新以提高准确性。