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A year in orbit: ISS deployment tests radiation detectors for future space missions
The predawn darkness on a cool Florida night was shattered by the ignition of nine Merlin engines on a SpaceX Falcon 9 rocket. The thrust of the engines shook the ground miles away. From a distance, the rocket appeared to slowly rise above the horizon. For the cargo onboard, the launch was anything but gentle, as the ignition of liquid oxygen generated more than 1.5 million pounds of force. After the rocket had been out of sight for several minutes, the booster dramatically returned to Earth with several sonic booms in a captivating show of engineering designed to make space travel less expensive and more sustainable.
Myung-Sub Roh, Se-Woo Cheon, Soon-Heung Chang
Nuclear Technology | Volume 94 | Number 2 | May 1991 | Pages 270-278
Technical Paper | Advances in Reactor Accident Consequence Assessment / Reactor Operation | doi.org/10.13182/NT91-A34548
Articles are hosted by Taylor and Francis Online.
An artificial neural network—a data processing system with a number of simple highly interconnected processing elements in an architecture inspired by the structure of the human brain—is proposed for the prediction of thermal power in nuclear power plants (NPPs). The back-propagation network (BPN) algorithm is applied to develop models of signal processing. A number of case studies are performed with emphasis on the applicability of the network in a steady-state high power level. The studies reveal that the BPN algorithm can precisely predict the thermal power of an NPP. It also shows that the defected signals resulting from instrumentation problems, even when the signals comprising various patterns are noisy or incomplete, can be properly handled.