Server fault monitoring method and system based on density clustering algorithm
A density clustering algorithm and fault monitoring technology, applied in non-redundant fault processing, instrumentation, computing, etc., can solve problems such as downtime and fault reset, and achieve the effect of improving stability
- Summary
- Abstract
- Description
- Claims
- Application Information
AI Technical Summary
Problems solved by technology
Method used
Image
Examples
Embodiment 1
[0051] A server fault monitoring method based on the density clustering algorithm of the present invention analyzes the health information data of the server and predicts the operating status of the server through the density clustering algorithm, performs fault warning on the server and resets the server when the server is down, the method includes Follow the steps below:
[0052] S100. Obtain the health information data of the server through the BMC and construct samples. The above samples are divided into training samples and test samples. The sample data in the above training samples need to mark the current server status. The above server status includes fault types and various fault types corresponding numeric data;
[0053] S200. Perform normalization processing on the above sample data;
[0054] S300. Construct a monitoring model based on the DBSCAN algorithm, and use training samples as input to optimize parameters of the monitoring model to obtain a trained monitori...
Embodiment 2
[0071] A server fault monitoring system based on a density clustering algorithm of the present invention includes a data acquisition module, a data preprocessing module, a model training module and a result output module, and the data acquisition module is used to obtain the health information data of the server through the BMC and construct a sample , the above samples are divided into training samples and test samples. The sample data in the above training samples need to mark the current server status. The above server status includes fault types and numerical data corresponding to various fault types; the data preprocessing module is used to The data is normalized; the model training module is used to build a monitoring model based on the DBSCAN algorithm, and uses the training samples as input to optimize the parameters of the above monitoring model to obtain a post-training monitoring model; the result output module is used to input the test samples into the post-training ...
PUM
Abstract
Description
Claims
Application Information
- R&D Engineer
- R&D Manager
- IP Professional
- Industry Leading Data Capabilities
- Powerful AI technology
- Patent DNA Extraction
Browse by: Latest US Patents, China's latest patents, Technical Efficacy Thesaurus, Application Domain, Technology Topic, Popular Technical Reports.
© 2024 PatSnap. All rights reserved.Legal|Privacy policy|Modern Slavery Act Transparency Statement|Sitemap|About US| Contact US: help@patsnap.com