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Predictive Artificial Neural Networks: a Block-adaptive Scheme for Lossless Telemetry Data Compression Rajasvaran Logeswaran
Predictive Artificial Neural Networks: a Block-adaptive Scheme for Lossless Telemetry Data Compression
Rajasvaran Logeswaran
Data compression deals with removal of redundancy, reducing bandwidth and thus lowering transmission and storage costs. Telemetry data can be sensitive to inaccuracies and require lossless compression for exact reconstruction at the receiver. One technology that has been successfully applied in a wide range of applications is artificial neural networks (ANN), a massively parallel system with pattern recognition capabilities. This monograph is a reproduction of the author?s postgraduate thesis work at Multimedia University, Malaysia. A two-stage predictor-encoder combination is proposed, incorporating a variety of feedforward, recurrent and radial basis ANN architectures, as the predictors. The encoders are well known compression algorithms. Characteristic features of the models, transmission issues and other practical considerations are taken into account to determine optimised configuration of the schemes. Significant compression results are reported, along with a critical review of the strengths and weaknesses of over 50 implementations simulated with satellite telemetry data.
| Mediji | Grāmatas Paperback Book (Grāmata ar mīksto vāku un līmēto muguru) |
| Izlaists | 2010. gada 21. jūnijs |
| ISBN13 | 9783838337449 |
| Izdevēji | LAP Lambert Academic Publishing |
| Lapas | 216 |
| Izmēri | 225 × 12 × 150 mm · 340 g |
| Valoda | Vācu |
Skatīt visus Rajasvaran Logeswaran ( piem., Paperback Book )