In the last years, predictive maintenance has gained a central position in condition-based maintenance tasks planning. Machine learning approaches have been very successful in simplifying the construction of prognostic models for health assessment based on available historical labeled data issued from similar systems or specific physical models. However, if the collected samples suffer from lack of labels small labeled dataset or not enough samples , the process of generalization of the learning model on the dataset as well as on the newly arrived samples application can be very difficult. In an attempt to overcome such drawbacks, a new deep supervised learning approach is introduced in this paper. The proposed approach aims at extracting and learning important patterns even from a small amount of data in order to produce more general health estimator. The algorithm is trained online based on local receptive field theories of extreme learning machines using data issued from a propulsion system simulator. Compared to extreme learning machine variants, the new algorithm shows a higher level of accuracy in terms of approximation and generalization under several training paradigms.
CLICK AND ENJOY GOOD MUSIC
I don't have an account yet. As a User. As an Artist. I already have an account. Log In Sign Up. Recho Mapenzi. I Need You. Natasha Shyrose.
Follow Us Today
I don't have an account yet. As a User. As an Artist. I already have an account. Log In Sign Up. Recho Mapenzi. Mudy ft Jdeal-Fitina. Kilevi Changu. Kindness Supanova. Nch Yangu.
You I think are ok with that. Whenever you bring something up, they'll say if it's not on lds. This also means giving her something specific to do. The greatest gift you can give to support: When they want a break, they will ask you and be ready and rejuvenated after. It sounds like you HAVE done your best in the past. I'm not quite bitter but a tad fed up as have given up family, career, friends and started afresh x 2 again to be left alone at the other side of the planet with two young kids, moving house and setting up home with just 4 suitcases.