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Peri-Net-Pro: the neural processes with quantified uncertainty for crack patterns
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作者 m.kim G.LIN 《Applied Mathematics and Mechanics(English Edition)》 SCIE EI CSCD 2023年第7期1085-1100,共16页
This paper develops a deep learning tool based on neural processes(NPs)called the Peri-Net-Pro,to predict the crack patterns in a moving disk and classifies them according to the classification modes with quantified u... This paper develops a deep learning tool based on neural processes(NPs)called the Peri-Net-Pro,to predict the crack patterns in a moving disk and classifies them according to the classification modes with quantified uncertainties.In particular,image classification and regression studies are conducted by means of convolutional neural networks(CNNs)and NPs.First,the amount and quality of the data are enhanced by using peridynamics to theoretically compensate for the problems of the finite element method(FEM)in generating crack pattern images.Second,case studies are conducted with the prototype microelastic brittle(PMB),linear peridynamic solid(LPS),and viscoelastic solid(VES)models obtained by using the peridynamic theory.The case studies are performed to classify the images by using CNNs and determine the suitability of the PMB,LBS,and VES models.Finally,a regression analysis is performed on the crack pattern images with NPs to predict the crack patterns.The regression analysis results confirm that the variance decreases when the number of epochs increases by using the NPs.The training results gradually improve,and the variance ranges decrease to less than 0.035.The main finding of this study is that the NPs enable accurate predictions,even with missing or insufficient training data.The results demonstrate that if the context points are set to the 10th,100th,300th,and 784th,the training information is deliberately omitted for the context points of the 10th,100th,and 300th,and the predictions are different when the context points are significantly lower.However,the comparison of the results of the 100th and 784th context points shows that the predicted results are similar because of the Gaussian processes in the NPs.Therefore,if the NPs are employed for training,the missing information of the training data can be supplemented to predict the results. 展开更多
关键词 neural process(NP) PERIDYNAMICS crack pattern molecular dynamic(MD)simulation machine learning Gaussian process regression convolutional neural network(CNN)
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甘蔗汁生产丁醇 被引量:1
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作者 m.kim D.F.Day +1 位作者 焦磊 许伟 《广西蔗糖》 2013年第1期42-46,共5页
丁醇是分子式为C4H9OH的一种饱和脂肪醇,它是一种可以运输的燃料,也是各种化学应用中的媒介和溶剂。20世纪50年代以前,丙酮丁醇梭杆菌发酵生产丙酮丁醇溶剂一直是工业上的标准方法。现代微生物的技术已经改造了生产菌,使之能够产出更高... 丁醇是分子式为C4H9OH的一种饱和脂肪醇,它是一种可以运输的燃料,也是各种化学应用中的媒介和溶剂。20世纪50年代以前,丙酮丁醇梭杆菌发酵生产丙酮丁醇溶剂一直是工业上的标准方法。现代微生物的技术已经改造了生产菌,使之能够产出更高纯度的丁醇,而不是产出以前那种混合溶剂。丁醇作为一种可替代燃料能源有许多的优势:(1)更高的能量。(2)能够在现有管道中运输使用。(3)容易和汽油相互混合。丁醇能够从甘蔗汁,糖蜜或蔗渣水解液中的糖中生产出来,这主要是通过一系列拜式梭菌发酵而实现的。甘蔗汁和糖蜜能够直接发酵生成丁醇。糖蜜发酵丁醇的产量为0.30g/g,甘蔗汁发酵丁醇的产量为0.34g/g,而等量的蔗糖浓度下每克蔗糖产出0.27克丁醇。从经济学角度来看,从甘蔗产品中生产丁醇的方法是可行的。 展开更多
关键词 生物量 丁醇 发酵 甘蔗汁
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