Integral evaluation for intermittent cold storage of apples by using mathematical modeling
文献类型: 外文期刊
作者: Han, Jia-Wei 1 ; Ji, Zeng-Tao 1 ; Zuo, Min 3 ; Yang, Xin-Ting 1 ;
作者机构: 1.Beijing Acad Agr & Forestry Sci, Informat Technol Res Ctr, Room 1109,Bldg A,Beijing NongkeMasion, Beijing 100097, Peoples R China
2.Natl Engn Res Ctr Informat Technol Agr, Beijing, Peoples R China
3.Beijing Acad Agr & Forestry Sci, Natl Engn Lab Agri Prod Qual Traceabil, Beijing, Peoples R China
期刊名称:JOURNAL OF FOOD PROCESS ENGINEERING ( 影响因子:2.356; 五年影响因子:2.417 )
ISSN: 0145-8876
年卷期: 2021 年 44 卷 11 期
页码:
收录情况: SCI
摘要: This study proposes an integrated approach to evaluate the efficiency of intermittent warming (IW) on cooling rate, uniformity, energy efficiency, mass loss, and the development of CIs by combining experiment and computational fluid dynamics (CFD) modeling. The results show that the cooling homogeneity and mass loss increases with increasing the warming duration and frequency, although the incidence of chilling injuries (CIs) and energy consumption decrease under these conditions. Near the bottom of the pallet, CIs increased and mass loss decreased because of the higher cooling rate of fruit in this zone. The accuracy of the CFD simulations was confirmed by a good agreement with experiments. The root-mean-square error and mean absolute percentage error for fruit temperature were 0.879 degrees C and 21.42%, respectively. Practical applications Reducing energy consumption and chilling injuries (CIs) is vital for improving the overall economic benefits of the cold chain and maintaining poststorage quality in fresh fruit. This research provides a reliable theoretical and experimental basis for improving the efficacy of IW and for ensuring optimum IW treatment and thereby minimizing energy consumption and CIs during fruit storage.
- 相关文献
作者其他论文 更多>>
-
A Variational Bayesian Inference-Based En-Decoder Framework for Traffic Flow Prediction
作者:Kong, Jianlei;Fan, Xiaomeng;Jin, Xuebo;Lin, Sen;Zuo, Min
关键词:Traffic flow prediction; time-series data prediction; variational Bayesian inference; multi-head attention; deep learning; encoder-decoder
-
Rapid identification of artificial fragrant rice based on volatile organic compounds: From PTR-MS to FTIR
作者:Liu, Yachao;Wang, Ke;Jiao, Leizi;Yang, Guiyan;Yang, Chongshan;Zhao, Xiande;Dong, Daming;Liu, Yachao;Wang, Ke;Jiao, Leizi;Yang, Guiyan;Yang, Chongshan;Zhao, Xiande;Dong, Daming;Zuo, Min
关键词:Artificial fragrant rice; VOCs; PTR-MS; LOPGP-FTIR; FEOW
-
Numerical analysis of coupled heat and mass transfer processes in packaged tomatoes throughout the cold chain
作者:Han, Jia-Wei;Zhu, Wen-Ying;Yang, Xin-Ting;Han, Jia-Wei;Zhu, Wen-Ying;Yang, Xin-Ting;Ren, Qing-Shan;Li, Jia-Cheng;Yang, Xin-Ting
关键词:Tomato; Heat and mass transfer; Computational fluid dynamics (CFD); Cold chain; Chain breaking
-
Ensuring the quality of meat in cold chain logistics: A comprehensive review
作者:Ren, Qing-Shan;Yang, Xin-Ting;Han, Jia-Wei;Ren, Qing-Shan;Yang, Xin-Ting;Han, Jia-Wei;Ren, Qing-Shan;Yang, Xin-Ting;Han, Jia-Wei;Ren, Qing-Shan;Fang, Kui
关键词:Meat; Cold chain logistics; Packaging; Quality perception; Intelligent development
-
Deep-Learning Temporal Predictor via Bidirectional Self-Attentive Encoder-Decoder Framework for IOT-Based Environmental Sensing in Intelligent Greenhouse
作者:Jin, Xue-Bo;Zheng, Wei-Zhen;Kong, Jian-Lei;Wang, Xiao-Yi;Zuo, Min;Zhang, Qing-Chuan;Kong, Jian-Lei;Zuo, Min;Zhang, Qing-Chuan;Lin, Seng
关键词:intelligent agricultural greenhouse; environmental factor prediction; deep-learning encoder-decoder; self-attention mechanism; Internet of Things
-
Deep-Stacking Network Approach by Multisource Data Mining for Hazardous Risk Identification in IoT-Based Intelligent Food Management Systems
作者:Kong, Jianlei;Yang, Chengcai;Wang, Jianli;Wang, Xiaoyi;Zuo, Min;Jin, Xuebo;Kong, Jianlei;Zuo, Min;Lin, Sen
关键词:
-
A comprehensive review of cold chain logistics for fresh agricultural products: Current status, challenges, and future trends
作者:Han, Jia-Wei;Zhu, Wen-Ying;Yang, Xin-Ting;Zuo, Min;Zuo, Jin-Hua;Lu, En-Li
关键词:Fresh agricultural products; Cold chain; Food safety; Digital development; Energy conservation; China