SaaS business cloud platform for air compressor equipment
The SaaS service cloud platform for machine tool fault prediction provides users with platform functions such as status monitoring, fault analysis, scene monitoring, fault management, operation and maintenance management, equipment management, customer management and permission management, as well as platform data reading interface function. Through big data analysis tools, SaaS business cloud platform provides professional users with equipment operation status analysis, early warning fault analysis, and forms professional industrial equipment health diagnosis reports and maintenance suggestions.
Fault prediction algorithm model: firstly, the system collects the vibration characteristics and load temperature characteristics of machine tools and equipment through the high-frequency vibration sensor and platinum resistance of the Internet of things, and forms a vibration characteristic sample library; Then, the intelligent algorithm (machine learning algorithm library) is used to carry out machine self-learning on these original data samples, generate the corresponding fault prediction algorithm model, and form the fault prediction model library; The fault prediction algorithm model is used to analyze and process the real-time collected data, so as to realize the fault prediction and diagnosis of machine tools and equipment, such as accurate prediction of tool life, process optimization of cutting conditions and tool geometry, and effective improvement of production efficiency.