食物腐败
气凝胶
计算机科学
食品包装
保质期
环境科学
工艺工程
材料科学
纳米技术
食品科学
工程类
化学
遗传学
细菌
生物
作者
Shiwei Zheng,Dangfeng Wang,Likun Ren,Tian Wang,Yuqiong Meng,Rui Ma,Shulin Wang,Fangchao Cui,Tingting Li,Jianrong Li
标识
DOI:10.1016/j.ijbiomac.2024.131485
摘要
Global seafood consumption is estimated at 156 million tons annually, with an economic loss of >25 billion euros annually due to marine fish spoilage. In contrast to traditional smart packaging which can only roughly estimate food freshness, an intelligent platform integrating machine learning and smart aerogel can accurately predict remaining shelf life in food products, reducing economic losses and food waste. In this study, we prepared aerogels based on anthocyanin complexes that exhibited excellent environmental responsiveness, high porosity, high color-rendering properties, high biocompatibility, high stability, and irreversibility. The aerogel showed excellent indication properties for rainbow trout and proved suitable for fish storage environments. Among the four machine learning models, the radial basis function neural network and backpropagation network optimized by genetic algorithm demonstrated excellent monitoring performance. Also, the two-channel dataset provided more comprehensive information and superior descriptive capability. The three-layer structure of the monitoring platform provided a new paradigm for intelligent and sophisticated food packaging. The results of the study might be of great significance to the food industry and sustainable development.
科研通智能强力驱动
Strongly Powered by AbleSci AI