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New company throws hat into uranium conversion ring
Officially launched at CERAWeek 2026, held last week in Houston, Texas, FluxPoint Energy has unveiled plans to develop what it expects to be the first new U.S. uranium conversion facility in more than 70 years, a move aimed at strengthening America’s nuclear fuel supply chain.
The Houston- and McLean, Va.–based company plans to convert uranium oxide into uranium hexafluoride (UF₆), a critical intermediate step in producing fuel for the nation’s existing nuclear reactors as well as next-generation technologies under development.
Se Woo Cheon, Soon Heung Chang
Nuclear Technology | Volume 102 | Number 2 | May 1993 | Pages 177-191
Technical Paper | Nuclear Reactor Safety | doi.org/10.13182/NT93-A34815
Articles are hosted by Taylor and Francis Online.
Expert systems that have neural networks for their knowledge bases are called connectionist expert systems. Several powerful advantages of connectionist expert systems over conventional rule-based expert systems are discussed. The backpropagation network (BPN) algorithm is applied to the connectionist expert system for the identification of transients in nuclear power plants. In this approach, the transient is identified by mapping or associating patterns of symptom input vectors to patterns representing transient conditions. The general mapping capability of the neural network allows one to identify a transient easily. A number of case studies are performed with emphasis on the applicability of the neural network to the classification problems. Based on the case studies, the BPN algorithm can identify the transient well, although untrained, incomplete, sensor-failed, or time-varying symptoms are given. Also, multiple transients are easily identified with a given symptom input vector.