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Electrochemical Data Analysis and Simulation via Artificial Neural Intelligence for Pyroprocessing Safeguards Application

机译:通过人工神经智能进行电化学数据分析和仿真,用于易于解雇保护施用

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Pyroprocessing technology is a high-temperature method utilizing molten salts for used nuclear fuel treatment. The heart of this process is an electrorefiner (ER) which contains different fission, rare-earth, and transuranic chloride compositions during the operation. As a result, materials detection and accountability towards safeguards within the ER are extremely important in order to advance this technology. Development of a smart signal detection program toward pyroprocessing safeguards will require full understanding of massive ER systemic parameters. To obtain this desired goal, a novel electrochemical data analysis and simulation using an artificial neural intelligence (ANI) method has been developed and explored. One of the common electrochemical methods, cyclic voltammetry (CV), has been chosen to successfully test this approach as the first stepping stone. Massive collected data sets by Hoover (2014), over 77,000 data values, for 0.5 to 5 wt% of zirconium (Zr) in LiCl-KCl molten salt at 773 K with different scan rates has been considered to provide multi-variables (e.g. scan rate, voltage, current, time, and concentration) for ANI technique [1]. The computational code which has been performed using the commercial software MATLAB, weighted each inputs and contrasted with the sum of inputs to the threshold value to produce the outputs. That is, ANI can be used to mimic the system by driving the data sets of currents, potentials, concentrations, scan rates and process time through interrelation between variables to provide a current and potential simulated data set. Optimizing the ANI process is related to choice a proper number of second layer which is called intermediate hidden layer. Preliminary results demonstrate that the model can predict the current versus potential diagram with an error around 16%.
机译:易用技术是利用熔盐进行使用的核燃料处理的高温方法。该方法的核心是在操作期间含有不同裂变,稀土和过杀杀杀杀杀菌组合物的电火虫(ER)。因此,在ER内的保障措施的材料检测和问责制是非常重要的,以便推进这项技术。开发达到易于处理安全性的智能信号检测程序将需要充分了解大规模的ER系统参数。为了获得这种理想的目标,已经开发并探索了使用人工神经智能(ANI)方法的新型电化学数据分析和仿真。已经选择了一种常见的电化学方法,循环伏安法(CV),以成功地将这种方法作为第一梯度的石材成功地测试。通过HoOVer(2014),超过77,000个数据值的大规模收集数据,以不同的扫描速率的773 k在LiCl-Kcl熔盐中为0.5至5wt%的锆(Zr),以提供多变量(例如扫描ANI技术的速率,电压,电流,时间和浓度[1]。已经使用商业软件MATLAB执行的计算代码,加权每个输入并与阈值的输入之和形成为产生输出。也就是说,ANI可用于通过驱动电流,电位,浓度,扫描速率和处理时间来模拟系统,通过变量之间的相互关系来提供电流和电位模拟数据集。优化ANI进程与选择是一个称为中间隐藏层的适当数量的第二层。初步结果表明,该模型可以预测电流与潜在图,误差约为16%。

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