Predicting the excretion of feces, urine and nitrogen using support vector regression: A case study with Holstein dry cows
文献类型: 外文期刊
第一作者: Fu, Qiang
作者: Fu, Qiang;Shen, Weizheng;Wei, Xiaoli;Yin, Yanling;Zheng, Ping;Su, Zhongbin;Zhao, Chunjiang;Shen, Weizheng;Wei, Xiaoli;Yin, Yanling;Zhang, Yonggen;Zhao, Chunjiang
作者机构:
关键词: cow farming pollution; feces/urine excretion prediction; nitrogen excretion prediction; non-parametric model; SVR technique
期刊名称:INTERNATIONAL JOURNAL OF AGRICULTURAL AND BIOLOGICAL ENGINEERING ( 影响因子:2.032; 五年影响因子:2.137 )
ISSN: 1934-6344
年卷期: 2020 年 13 卷 2 期
页码:
收录情况: SCI
摘要: Predicting the excretion of feces, urine and nitrogen (N) from dairy cows is an effective way to prevent and control the environmental pollution caused by scaled farming. The traditional prediction methods such as pollutant generation coefficient (PGC) and mathematical model based on linear regression (LR) may be limited by prediction range and regression function assumption, and sometimes may deviate from the actual condition. In order to solve these problems, the support vector regression (SVR) was applied for predicting the cows' feces, urine and N excretions, taking Holstein dry cows as a case study. SVR is a typical non-parametric machine learning model that does not require any specific assumptions about the regression function in advance and only by learning the training sample data, and also it can fit the function closest to the actual in most cases. To evaluate prediction accuracy effectively, the SVR technique was compared with the LR and radial basis function artificial neural network (RBF-ANN) methods, using the required sample data obtained from actual feeding experiments. The prediction results indicate that the proposed technique is superior to the other two conventional (especially LR) methods in predicting the main indicators of feces, urine, and N excretions of Holstein dry cows.
分类号:
- 相关文献
作者其他论文 更多>>
-
Copy Number Variations in Short Tandem Repeats Modulate Growth Traits in Penaeid Shrimp Through Neighboring Gene Regulation
作者:Zhou, Hao;Qiang, Guangfeng;Xia, Yan;Tan, Jian;Fu, Qiang;Luo, Kun;Meng, Xianhong;Chen, Baolong;Chen, Meijia;Sui, Juan;Dai, Ping;Li, Xupeng;Liu, Mianyu;Kong, Jie;Luan, Sheng;Zhou, Hao;Qiang, Guangfeng;Xia, Yan;Tan, Jian;Fu, Qiang;Luo, Kun;Meng, Xianhong;Chen, Baolong;Chen, Meijia;Sui, Juan;Dai, Ping;Li, Xupeng;Liu, Mianyu;Kong, Jie;Luan, Sheng;Xing, Qun
关键词:short tandem repeats; STR; growth trait; penaeid shrimp; molecular breeding
-
Genetic Diversity Assessment and Core Germplasm Screening of Blackcurrant (Ribes nigrum) in China via Expressed Sequence Tag-Simple Sequence Repeat Markers
作者:Sun, Xinyu;Fu, Qiang;Qin, Dong;Xiong, Jinyu;Quan, Xin;Guo, Hao;Huo, Junwei;Zhu, Chenqiao;Tang, Jiahan
关键词:
Ribes nigrum ; EST-SSR markers; genetic diversity; population structure; core germplasm resources -
Recognition of maize seedling under weed disturbance using improved YOLOv5 algorithm
作者:Tang, Boyi;Zhao, Chunjiang;Tang, Boyi;Zhou, Jingping;Pan, Yuchun;Qu, Xuzhou;Cui, Yanglin;Liu, Chang;Li, Xuguang;Zhao, Chunjiang;Gu, Xiaohe;Li, Xuguang
关键词:Object detection; Maize seedlings; UAV RGB images; YOLOv5; Attention mechanism
-
Boosting Cost-Efficiency in Robotics: A Distributed Computing Approach for Harvesting Robots
作者:Xie, Feng;Xie, Feng;Li, Tao;Feng, Qingchun;Li, Tao;Feng, Qingchun;Chen, Liping;Zhao, Chunjiang;Zhao, Hui
关键词:5G network; computation allocation; edge computing; harvesting robot; visual system
-
Genotyping Identification of Maize Based on Three-Dimensional Structural Phenotyping and Gaussian Fuzzy Clustering
作者:Xu, Bo;Zhao, Chunjiang;Xu, Bo;Zhao, Chunjiang;Yang, Guijun;Zhang, Yuan;Liu, Changbin;Feng, Haikuan;Yang, Xiaodong;Yang, Hao;Xu, Bo;Zhao, Chunjiang;Yang, Guijun;Zhang, Yuan;Liu, Changbin;Feng, Haikuan;Yang, Xiaodong;Yang, Hao
关键词:tassel; 3D phenotyping; TreeQSM; genotyping; clustering
-
High-throughput phenotyping techniques for forage: Status, bottleneck, and challenges
作者:Cheng, Tao;Zhang, Dongyan;Cheng, Tao;Wang, Zhaoming;Zhang, Dongyan;Zhang, Gan;Yuan, Feng;Liu, Yaling;Wang, Tianyi;Ren, Weibo;Zhao, Chunjiang
关键词:Forage; High-throughput phenotyping; Precision identification; Sensors; Artificial intelligence; Efficient breeding
-
Genomic Evaluation of Harvest Weight Uniformity in Penaeus vannamei Under a 3FAM Design Incorporating Indirect Genetic Effect
作者:Gao, Siqi;Tian, Yi;Gao, Siqi;Xia, Yan;Kong, Jie;Meng, Xianhong;Luo, Kun;Sui, Juan;Dai, Ping;Tan, Jian;Li, Xupeng;Cao, Jiawang;Chen, Baolong;Fu, Qiang;Liu, Junyu;Luan, Sheng;Gao, Siqi;Xia, Yan;Kong, Jie;Meng, Xianhong;Luo, Kun;Sui, Juan;Dai, Ping;Tan, Jian;Li, Xupeng;Cao, Jiawang;Chen, Baolong;Fu, Qiang;Liu, Junyu;Luan, Sheng;Xing, Qun
关键词:
Penaeus vannamei ; harvest weight uniformity; indirect genetic effects; H matrix; genetic parameters