The problem of predictive maintenance is a very crucial one for every technological company. This is particularly true for mobile phones service providers, as mobile phone networks require continuous monitoring. The ability of previewing malfunctions is crucial to reduce maintenance costs and loss of customers. In this paper we describe a preliminary study in predicting failures in a mobile phones networks based on the analysis of real data. A ridge regression classifier has been adopted as machine learning engine, and interesting and promising conclusion were drawn from the experimental data
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Mobile telecom industry competition has been fierce for decades, therefore increasing the importance...
The problem of predictive maintenance is a very crucial one for every technological company. This is...
Spare parts management is the backbone of asset intensive industries such as telecommunications comp...
Predictive maintenance has emerged as a powerful approach to optimize the maintenance of complex sys...
Any company in the industrial sector requires constant and uninterrupted operation of its systems as...
In this paper, a multiple classifier machine learning (ML) methodology for predictivemaintenance (Pd...
As the demand for mobile network services increases, immediate detection and forecasting of network ...
Predictive maintenance (PdM) is a concept, which is implemented to effectively manage maintenance pl...
Sony Mobile Communications (SoMC) perpetually collect large amounts of prototype device data into th...
The Industrial Internet of Things (IIoT) is the use of Internet of Things (IoT) technologies in manu...
The increasing availability of data, gathered by sensors and intelligent machines, is chang-ing the ...
Traditional network and service management methods were based on counters, data records, and derive...
Industry 4.0 is characterized by production systems that integrate multiple sensors to collect and t...
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Mobile telecom industry competition has been fierce for decades, therefore increasing the importance...
The problem of predictive maintenance is a very crucial one for every technological company. This is...
Spare parts management is the backbone of asset intensive industries such as telecommunications comp...
Predictive maintenance has emerged as a powerful approach to optimize the maintenance of complex sys...
Any company in the industrial sector requires constant and uninterrupted operation of its systems as...
In this paper, a multiple classifier machine learning (ML) methodology for predictivemaintenance (Pd...
As the demand for mobile network services increases, immediate detection and forecasting of network ...
Predictive maintenance (PdM) is a concept, which is implemented to effectively manage maintenance pl...
Sony Mobile Communications (SoMC) perpetually collect large amounts of prototype device data into th...
The Industrial Internet of Things (IIoT) is the use of Internet of Things (IoT) technologies in manu...
The increasing availability of data, gathered by sensors and intelligent machines, is chang-ing the ...
Traditional network and service management methods were based on counters, data records, and derive...
Industry 4.0 is characterized by production systems that integrate multiple sensors to collect and t...
Vehicle uptime is getting increasingly important as the transport solutions become more complex and ...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Mobile telecom industry competition has been fierce for decades, therefore increasing the importance...