JP2020537221A5 - - Google Patents

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JP2020537221A5
JP2020537221A5 JP2020517468A JP2020517468A JP2020537221A5 JP 2020537221 A5 JP2020537221 A5 JP 2020537221A5 JP 2020517468 A JP2020517468 A JP 2020517468A JP 2020517468 A JP2020517468 A JP 2020517468A JP 2020537221 A5 JP2020537221 A5 JP 2020537221A5
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machine learning
learning algorithm
phase
subcritical
algorithm
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JP2020517468A
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JP7229233B2 (ja
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JP2020517468A 2017-09-26 2018-09-19 機械学習ベースのモデルを用いる高い費用効率の熱力学的流体特性の予測の方法 Active JP7229233B2 (ja)

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Application Number Priority Date Filing Date Title
US201762563460P 2017-09-26 2017-09-26
US62/563,460 2017-09-26
PCT/US2018/051684 WO2019067282A1 (en) 2017-09-26 2018-09-19 METHOD FOR PREDICTING ECONOMIC FLUID THERMODYNAMIC PROPERTIES USING MODELS BASED ON AUTOMATIC LEARNING

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JP2020537221A JP2020537221A (ja) 2020-12-17
JP2020537221A5 true JP2020537221A5 (https=) 2021-11-04
JP7229233B2 JP7229233B2 (ja) 2023-02-27

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US (1) US11449747B2 (https=)
EP (1) EP3688683A1 (https=)
JP (1) JP7229233B2 (https=)
CN (1) CN111344710A (https=)
CA (1) CA3076887A1 (https=)
WO (1) WO2019067282A1 (https=)

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CN112632787B (zh) * 2020-12-25 2023-11-28 浙江中控技术股份有限公司 多解闪蒸优化策略的仿真测试方法
CN113539387A (zh) * 2021-07-09 2021-10-22 西南石油大学 一种基于CPA状态方程预测NaCl水溶液中CO2溶解度的方法
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CN115688592B (zh) * 2022-11-09 2023-05-09 福建德尔科技股份有限公司 用于电子级四氟化碳制备的精馏控制系统及其方法
CN116992296A (zh) * 2023-09-27 2023-11-03 广东电网有限责任公司珠海供电局 电子敏感设备发生暂降的中断概率评估方法、装置和设备
CN119849340B (zh) * 2025-03-20 2025-07-15 中国石油大学(华东) 一种基于机器学习相识别模型的三相闪蒸计算方法

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