论文标题
使用载体量化变异自动编码器的p氧化p的过程历史和现象学研究
Investigation of process history and phenomenology of plutonium oxides using vector quantizing variational autoencoder
论文作者
论文摘要
需要对氧化p的准确,高吞吐量和无偏分析,以分析与过程参数合成中与过程参数相关的现象学。与定性和分类学描述符相比,通过扫描电子显微镜(SEM)的粒子形态描述符(SEM)显示出在分析铀氧化物的过程参数方面的成功。我们利用VQ-VAE定量描述在设计实验中创建的二氧化核(PUO2)颗粒,并研究其现象学和对过程参数的预测。 PUO2是从与浓度,温度,加法和消化时间,沉淀剂进料和罢工顺序相关的不同合成条件下沉淀的PU(III)草酸盐酶有般的;通过SEM分析了所得PUO2粉末的表面形态。开发了一条管道来提取和量化具有VQ-VAE的单个粒子的有用图像表示,以同时执行多个分类任务。减少的特征空间可以预测具有单个粒子的某些参数的精度超过80%精度的过程参数。它们还显示了将具有相似表面形态特征的颗粒分组在一起的效用。聚类和分类结果都揭示了有关哪种化学过程参数主要影响PUO2粒子形态的有价值的信息:罢工顺序和草酸原料。证明使用多个粒子进行相同的分析,可以提高每个过程参数的分类精度,而不是单个粒子的使用,并且在样品中通常只有四个粒子,其统计学意义的结果通常在统计上显着。
Accurate, high throughput, and unbiased analysis of plutonium oxide particles is needed for analysis of the phenomenology associated with process parameters in their synthesis. Compared to qualitative and taxonomic descriptors, quantitative descriptors of particle morphology through scanning electron microscopy (SEM) have shown success in analyzing process parameters of uranium oxides. We utilize a VQ-VAE to quantitatively describe plutonium dioxide (PuO2) particles created in a designed experiment and investigate their phenomenology and prediction of their process parameters. PuO2 was calcined from Pu(III) oxalates that were precipitated under varying synthetic conditions that related to concentrations, temperature, addition and digestion times, precipitant feed, and strike order; the surface morphology of the resulting PuO2 powders were analyzed by SEM. A pipeline was developed to extract and quantify useful image representations for individual particles with the VQ-VAE to perform multiple classification tasks simultaneously. The reduced feature space could predict process parameters with greater than 80% accuracies for some parameters with a single particle. They also showed utility for grouping particles with similar surface morphology characteristics together. Both the clustering and classification results reveal valuable information regarding which chemical process parameters chiefly influence the PuO2 particle morphologies: strike order and oxalic acid feedstock. Doing the same analysis with multiple particles was shown to improve the classification accuracy on each process parameter over the use of a single particle, with statistically significant results generally seen with as few as four particles in a sample.