
Status Quo of Waterfowl Intelligent Farming Research Review and Development Trend Analysis
LIU Youfu, XIAO Deqin, ZHOU Jiaxin, BIAN Zhiyi, ZHAO Shengqiu, HUANG Yigui, WANG Wence
Status Quo of Waterfowl Intelligent Farming Research Review and Development Trend Analysis
Waterfowl farming in China is developing rapidly in the direction of large-scale, standardization and intelligence. The research and application of intelligent farming equipment and information technology is the key to promote the healthy and sustainable development of waterfowl farming, which is important to improve the output efficiency of waterfowl farming, reduce the reliance on labor in the production process, fit the development concept of green and environmental protection and achieve high-quality transformational development. In this paper, the latest research and inventions of intelligent waterfowl equipment, waterfowl shed environment intelligent control technology and intelligent waterfowl feeding, drinking water, dosing and disinfection and automatic manure treatment equipment were introduced. At present, compared to pigs, chickens and cattle, the intelligent equipment of waterfowl are still relatively backward. Most waterfowl houses are equipped with chicken equipment directly, lacking improvements for waterfowl. Moreover, the linkage between the equipment is poor and not integrated with the breeding mode and shed structure of waterfowl, resulting in low utilization. Therefore, there is a need to develop and improve equipment for the physiological growth characteristics of waterfowl from the perspective of their breeding welfare. In addition, the latest research advances in the application of real-time production information collection and intelligent management technologies were present. The information collection technologies included visual imaging technology, sound capture systems, and wearable sensors were present. Since the researches of ducks and geese is few, the research of poultry field, which can provide a reference for the waterfowl were also summarized. The research of information perception and processing of waterfowl is currently in its initial stage. Information collection techniques need to be further tailored to the physiological growth characteristics of waterfowl, and better deep learning models need to be established. The waterfowl management platform, taking the intelligent management platform developed by South China Agricultural University as an example were also described. Finally, the intelligent application of the waterfowl industry was pointed out, and the future trends of intelligent farming with the development of mechanized and intelligent equipment for waterfowl in China to improve the recommendations were analyzed. The current waterfowl farming is in urgent need of intelligent equipment reform and upgrading of the industry for support. In the future, intelligent equipment for waterfowl, information perception methods and control platforms are in urgent to be developed. When upgrading the industry, it is necessary to develop a development strategy that fits the current waterfowl farming model in China.
smart breeding / waterfowl farming / intelligent equipment / information collection techniques / intelligent management platform / vision imaging / wearable sensor {{custom_keyword}} /
1 | 侯水生, 刘灵芝. 2019年水禽产业现状、未来发展趋势与建议[J]. 中国畜牧杂志, 2020, 56(3): 130-135. |
HOU S S, LIU L Z. Present situation, future development trend and suggestions of waterfowl industry in 2019[J]. Chinese journal of animal science, 2020, 56(3): 130-135. | |
2 | 侯水生, 刘灵芝. 2021年水禽产业现状、未来发展趋势与建议[J]. 中国畜牧杂志, 2022, 58(3): 227-231, 238. |
HOU S S, LIU L Z. Present situation, future development trend and suggestions of waterfowl industry in 2021[J]. Chinese journal of animal science, 2022, 58(3): 227-231, 238. | |
3 | 侯水生. 2018年度水禽产业发展现状、未来发展趋势与建议[J]. 中国畜牧杂志, 2019, 55(3): 124-128. |
HOU S S. Present situation, future development trend and suggestions of waterfowl industry in 2018[J]. Chinese journal of animal science, 2019, 55(3): 124-128. | |
4 | 殷若新, 肖玲, 李永刚, 等. 计算机自动控制技术在水禽生产中的应用[J]. 家禽科学, 2021(9): 57-58, 60. |
YIN R X, XIAO L, LI Y G, et al. Application of computer automatic control technology in waterfowl production[J]. Poultry science, 2021(9): 57-58, 60. | |
5 | 侯水生. 2017年水禽产业发展现状、未来发展趋势与建议[J]. 中国畜牧杂志, 2018, 54(3): 144-148. |
HOU S S. Present situation, future development trend and suggestions of waterfowl industry in 2017[J]. Chinese journal of animal science, 2018, 54(3): 144-148. | |
6 | 林勇, 鲍恩财, 叶成智, 等. 层叠式笼养肉鸭舍冬季环境测试及通风窗位置优化模拟[J]. 农业工程学报, 2019, 35(23): 218-225. |
LIN Y, BAO E C, YE C Z, et al. Winter environment test and ventilation window location optimization of cascading cage-rearing laying duck house[J]. Transactions of the Chinese society of agricultural engineering, 2019, 35(23): 218-225. | |
7 | 侯水生, 黄苇, 张林, 等. 我国养鸭业发展现状与问题分析[J]. 中国禽业导刊, 2006, 23(24): 11-13, 1. |
HOU S S, HUANG W, ZHANG L, et al. Analysis on the development status and problems of duck industry in China[J]. Guide to Chinese poultry, 2006, 23(24): 11-13, 1. | |
8 | WOLFERT S, GE L, VERDOUW C, et al. Big data in smart farming—A review[J]. Agricultural systems, 2017, 153: 69-80. |
9 | ZHAO Y, ZHAO D, MA H, et al. Environmental assessment of three egg production systems—Part III: Airborne bacteria concentrations and emissions[J]. Poultry science, 2016, 95(7): 1473-1481. |
10 | SMITH D, LYLE S, BERRY A, et al. Internet of animal health things (IoAHT) opportunities and challenges[EB/OL]. [2022-05-16].. |
11 | WANG Y, ZHENG W C, LI B M, et al. A new ventilation system to reduce temperature fluctuations in laying hen housing in continental climate[J]. Biosystems engineering, 2019, 181: 52-62. |
12 | 王平, 马俊贵. 畜禽舍环境控制及防疫系统试验[J]. 农业工程, 2014, 4(2): 26-28. |
WANG P, MA J G. Environmental control and immunization system for corral[J]. Agricultural engineering, 2014, 4(2): 26-28. | |
13 | PEREIRA W F, SILVA FONSECA LDA, PUTTI F F, et al. Environmental monitoring in a poultry farm using an instrument developed with the Internet of Things concept[J]. Computers and electronics in agriculture, 2020, 170: ID 105257. |
14 | 应诗家, 杨智青, 朱冰, 等. 发酵床垫料翻耙结合网床养殖改善鸭舍空气质量与鸭生产性能[J]. 农业工程学报, 2016, 32(3): 188-194. |
YING S J, YANG Z Q, ZHU B, et al. Bio-bedding with automatically running plough system under slatted floor improving air quality of duck house and duck production performances[J]. Transactions of the Chinese society of agricultural engineering, 2016, 32(3): 188-194. | |
15 | 郭彬彬, 孙爱东, 丁为民, 等. 种鹅舍环境智能监控系统的研制和试验[J]. 农业工程学报, 2017, 33(9): 180-186. |
GUO B B, SUN A D, DING W M, et al. Development and experiment of intelligent monitoring system for geese house environment[J]. Transactions of the Chinese society of agricultural engineering, 2017, 33(9): 180-186. | |
16 | 徐敏. 樱桃谷肉鸭笼式养殖模式探讨[J]. 农业开发与装备, 2018(7): 233-234. |
XU M. Discussion on cage culture mode of cherry valley meat duck[J]. Agricultural development & equipments, 2018(7): 233-234. | |
17 | 刘双印, 黄建德, 徐龙琴, 等. 基于PCA-SVR-ARMA的狮头鹅养殖禽舍气温组合预测模型[J]. 农业工程学报, 2020, 36(11): 225-233. |
LIU S Y, HUANG J D, XU L Q, et al. Combined model for prediction of air temperature in poultry house for lion-head goose breeding based on PCA-SVR-ARMA[J]. Transactions of the Chinese society of agricultural engineering, 2020, 36(11): 225-233. | |
18 | 张燕军, 聂传斌, 袁金淇, 等. 一种水禽精准饲喂装置及其饲喂方法: CN113273517B[P]. 2022-09-06. |
19 | 闻治国, 杨培龙, 牛灿芳, 等. 一种水禽自动饲喂装置: CN206612006U[P]. 2017-11-07. |
20 | 杨宗武. 一种节约饲料的大规模水禽养殖用自动饲喂装置: CN109479755A[P]. 2021-03-30. |
21 | 任文涛, 王岳, 孔爱菊, 等. 稻田开放式自动化养鸭设备的研制及试验[J]. 农业工程学报, 2016, 32(5): 70-76. |
REN W T, WANG Y, KONG A J, et al. Development and experiment of automatic duck feeding device with opening way for paddy[J]. Transactions of the Chinese society of agricultural engineering, 2016, 32(5): 70-76. | |
22 | 倪征, 陈柳, 云涛, 等. 基于智能环境监测的蛋鸭环保型网床养殖圈舍设计及应用[J]. 中国家禽, 2022, 44(2): 70-76. |
NI Z, CHEN L, YUN T, et al. Design and application of environment-friendly netting bed breeding house for laying ducks based on intelligent environmental monitoring[J]. China poultry, 2022, 44(2): 70-76. | |
23 | SUNG J Y, ADEOLA O. Research Note: Estimation of individual feed intake of broiler chickens in group-housing systems[J]. Poultry science, 2022, 101(4): ID 101752. |
24 | ASTILL J, DARA R A, FRASER E D G, et al. Smart poultry management: Smart sensors, big data, and the Internet of Things[J]. Computers and electronics in agriculture, 2020, 170: ID 105291. |
25 | HADINIA S H, CARNEIRO P R O, OUELLETTE C A, et al. Energy partitioning by broiler breeder pullets in skip-a-day and precision feeding systems[J]. Poultry science, 2018, 97(12): 4279-4289. |
26 | ZUIDHOF M J. Lifetime productivity of conventionally and precision-fed broiler breeders[J]. Poultry science, 2018, 97(11): 3921-3937. |
27 | XIN H W, LIU K. Precision livestock farming in egg production[J]. Animal frontiers, 2017, 7(1): 24-31. |
28 | 王波, 袁建敏. 鸭饮水习性及饮水用具研究进展[J]. 水禽世界, 2010(2): 41-43. |
WANG B, YUAN J M. Research progress on drinking habits and drinking utensils of ducks[J]. Waterfowl world, 2010(2): 41-43. | |
29 | 王生雨, 程好良, 王爱琴, 等. 水禽自动饮水装置研制与应用效果试验[J]. 农业工程学报, 2013, 29(13): 54-59. |
WANG S Y, CHENG H L, WANG A Q, et al. Development and experiment on application effects of automatic drinking device for waterfowl[J]. Transactions of the Chinese society of agricultural engineering, 2013, 29(13): 54-59. | |
30 | 孔爱菊, 邬立岩, 宋玉秋, 等. 稻田鸭舍喂水控制系统设计[J]. 沈阳农业大学学报, 2015, 46(5): 618-623. |
KONG A J, WU L Y, SONG Y Q, et al. Design of water supplying control system for duck shed in paddy field[J]. Journal of Shenyang agricultural university, 2015, 46(5): 618-623. | |
31 | MAKAGON M M, RIBER A B. Setting research driven duck-welfare standards: A systematic review of Pekin duck welfare research[J]. Poultry science, 2022, 101(3): ID 101614. |
32 | 杨环. 畜禽养殖环境调控与智能养殖装备技术研究[J]. 畜禽业, 2022, 33(2): 74-76. |
YANG H. Study on regulation of livestock and poultry breeding environment and intelligent breeding equipment technology[J]. Livestock and poultry industry, 2022, 33(2): 74-76. | |
33 | 冯青春, 王秀, 邱权, 等. 畜禽舍防疫消毒机器人设计与试验[J]. 智慧农业(中英文), 2020, 2(4): 79-88. |
FENG Q C, WANG X, QIU Q, et al. Design and test of disinfection robot for livestock and poultry house[J]. Smart agriculture, 2020, 2(4): 79-88. | |
34 | 于珍珍, 王宏轩, 马国庆, 等. 畜禽舍自动清粪发酵一体化设备的研制与应用[J]. 中国家禽, 2021, 43(9): 65-71. |
YU Z Z, WANG H X, MA G Q, et al. Design and application of integrated equipment for automatic manure cleaning and fermentation in livestock and poultry house[J]. China poultry, 2021, 43(9): 65-71. | |
35 | 李明阳, 应诗家, 戴子淳, 等. 新型肉鸭养殖模式生产性能及经济效益对比分析[J]. 中国家禽, 2020, 42(4): 80-85. |
LI M Y, YING S J, DAI Z C, et al. Comparative analysis of production performance and economic benefits of new meat duck production systems in China[J]. China poultry, 2020, 42(4): 80-85. | |
36 | N S NABD AZIZ, MOHD DAUD S, DZIYAUDDIN R A, et al. A review on computer vision technology for monitoring poultry farm—Application, hardware, and software[J]. IEEE access, 2020, 9: 12431-12445. |
37 | MANTEUFFEL G, PUPPE B, SCH?N P C. Vocalization of farm animals as a measure of welfare[J]. Applied animal behaviour science, 2004, 88(1/2): 163-182. |
38 | NEETHIRAJAN S. Recent advances in wearable sensors for animal health management[J]. Sensing and bio-sensing research, 2017, 12: 15-29. |
39 | GUO Y Y, CHAI L L, AGGREY S E, et al. A machine vision-based method for monitoring broiler chicken floor distribution[J]. Sensors, 2020, 20(11): ID 3179. |
40 | GEFFEN O, YITZHAKY Y, BARCHILON N, et al. A machine vision system to detect and count laying hens in battery cages[J]. Animal, 2020, 14(12): 2628-2634. |
41 | CAO L B, XIAO Z H, LIAO X H, et al. Automated chicken counting in surveillance camera environments based on the point supervision algorithm: LC-DenseFCN[J]. Agriculture, 2021, 11: ID 493. |
42 | PEREIRA D F, MIYAMOTO B C B, MAIA G D N, et al. Machine vision to identify broiler breeder behavior[J]. Computers and electronics in agriculture, 2013, 99: 194-199. |
43 | LI G M, HUI X, CHEN Z Q, et al. Development and evaluation of a method to detect broilers continuously walking around feeder as an indication of restricted feeding behaviors[J]. Computers and electronics in agriculture, 2021, 181: ID 105982. |
44 | LI G M, HUI X, LIN F, et al. Developing and evaluating poultry preening behavior detectors via mask region-based convolutional neural network[J]. Animals: An open access journal from MDPI, 2020, 10(10): ID 1762. |
45 | ZHUANG X L, BI M N, GUO J L, et al. Development of an early warning algorithm to detect sick broilers[J]. Computers and electronics in agriculture, 2018, 144: 102-113. |
46 | WANG C, CHEN H Q, ZHANG X B, et al. Evaluation of a laying-hen tracking algorithm based on a hybrid support vector machine[J]. Journal of animal science and biotechnology, 2016, 7: ID 60. |
47 | KHAIRUNISSA J, WAHJUNI S, SOESANTO I R H, et al. Detecting poultry movement for poultry behavioral analysis using the multi-object tracking (MOT) algorithm[C]// 2021 8th International Conference on Computer and Communication Engineering (ICCCE). Piscataway, NJ, USA: IEEE, 2021: 265-268. |
48 | ZANINELLI M, REDAELLI V, TIRLONI E, et al. First results of a detection sensor for the monitoring of laying hens reared in a commercial organic egg production farm based on the use of infrared technology[J]. Sensors, 2016, 16(10): ID 1757. |
49 | ZANINELLI M, ROSSI L, COSTA A, et al. Performance of injected RFID transponders to collect data about laying performance and behaviour of hens[J]. Large Animal Review, 2016, 22(2): 77-82. |
50 | FERREIRA V, FRANCISCO N, BELLONI M, et al. Infrared thermography applied to the evaluation of metabolic heat loss of chicks fed with different energy densities[J]. Revista brasileira de ciência avícola, 2011, 13(2): 113-118. |
51 | 沈明霞, 陆鹏宇, 刘龙申, 等. 基于红外热成像的白羽肉鸡体温检测方法[J]. 农业机械学报, 2019, 50(10): 222-229. |
SHEN M X, LU P Y, LIU L S, et al. Body temperature detection method of ross broiler based on infrared thermography[J]. Transactions of the Chinese society for agricultural machinery, 2019, 50(10): 222-229. | |
52 | JACOB F, BARACHO M, N??S I A, et al. The use of infrared thermography in the identification of pododermatitis in broilers[J]. Journal of the brazilian association of agricultural engineering, 2016, 36: 253-259. |
53 | XIONG X G, LU M Z, YANG W Z, et al. An automatic head surface temperature extraction method for top-view thermal image with individual broiler[J]. Sensors, 2019, 19(23): ID 5286. |
54 | KIM N Y, KIM S J, OH M, et al. Changes in facial surface temperature of laying hens under different thermal conditions[J]. Animal bioscience, 2021, 34(7): 1235-1242. |
55 | PEREIRA D F, LOPES F A A, ALMEIDA GABRIEL FILHO L R, et al. Cluster index for estimating thermal poultry stress (gallus gallus domesticus)[J]. Computers and electronics in agriculture, 2020, 177: ID 105704. |
56 | 刘修林, 王福杰, 刘烨红, 等. 病理与健康蛋鸡体表温度的对比研究[J]. 中国家禽, 2017, 39(2): 53-56. |
LIU X L, WANG F J, LIU Y H, et al. Comparative study on body surface temperature of pathological and healthy laying hens[J]. China poultry, 2017, 39(2): 53-56. | |
57 | 许志强, 沈明霞, 刘龙申, 等. 基于红外热图像的肉鸡腿部异常检测方法[J]. 南京农业大学学报, 2021, 44(2): 384-393. |
XU Z Q, SHEN M X, LIU L S, et al. Abnormal recognition method of broiler leg based on infrared thermal image[J]. Journal of Nanjing agricultural university, 2021, 44(2): 384-393. | |
58 | MORTENSEN A K, LISOUSKI P, AHRENDT P. Weight prediction of broiler chickens using 3D computer vision[J]. Computers and electronics in agriculture, 2016, 123: 319-326. |
59 | LIU D, VRANKEN E, VAN DEN BERG G, et al. Separate weighing of male and female broiler breeders by electronic platform weigher using camera technologies[J]. Computers and electronics in agriculture, 2021, 182: ID 106009. |
60 | RIZWAN M, CARROLL B T, ANDERSON D V, et al. Identifying rale sounds in chickens using audio signals for early disease detection in poultry[C] // 2016 IEEE Global Conference on Signal and Information Processing (GlobalSIP). Piscataway, NJ, USA: IEEE, 2017: 55-59. |
61 | BANAKAR A, SADEGHI M, SHUSHTARI A. An intelligent device for diagnosing avian diseases: Newcastle, infectious bronchitis, avian influenza[J]. Computers and electronics in agriculture, 2016, 127: 744-753. |
62 | HUANG J D, WANG W Q, ZHANG T M. Method for detecting avian influenza disease of chickens based on sound analysis[J]. Biosystems engineering, 2019, 180: 16-24. |
63 | LIU L S, LI B, ZHAO R Q, et al. A novel method for broiler abnormal sound detection using WMFCC and HMM[J]. Journal of sensors, 2020, 2020: 1-7. |
64 | 秦伏亮, 沈明霞, 刘龙申, 等. 基于音频技术的白羽肉鸡咳嗽识别算法研究[J]. 南京农业大学学报, 2020, 43(2): 372-378. |
QIN F L, SHEN M X, LIU L S, et al. Study on recognition algorithm of white feather broiler cough based on audio technology[J]. Journal of Nanjing agricultural university, 2020, 43(2): 372-378. | |
65 | CARPENTIER L, VRANKEN E, BERCKMANS D, et al. Development of sound-based poultry health monitoring tool for automated sneeze detection[J]. Computers and electronics in agriculture, 2019, 162: 573-581. |
66 | CUAN K X, ZHANG T M, HUANG J D, et al. Detection of avian influenza-infected chickens based on a chicken sound convolutional neural network[J]. Computers and electronics in agriculture, 2020, 178: ID 105688. |
67 | DU X D, CARPENTIER L, TENG G H, et al. Assessment of laying hens' thermal comfort using sound technology[J]. Sensors, 2020, 20(2): ID 473. |
68 | OKADA H, ITOH T, SUZUKI K, et al. Wireless sensor system for detection of avian influenza outbreak farms at an early stage[C]// Sensors, 2009 IEEE. Piscataway, NJ, USA: IEEE, 2010: 1374-1377. |
69 | OKADA H, SUZUKI K, KENJI T, et al. Applicability of wireless activity sensor network to avian influenza monitoring system in poultry farms[J]. Journal of sensor technology, 2014, 4(1): 18-23. |
70 | BANERJEE D, BISWAS S, DAIGLE C, et al. Remote activity classification of hens using wireless body mounted sensors[C]// Proceedings of the 2012 Ninth International Conference on Wearable and Implantable Body Sensor Networks. New York, USA: ACM, 2012: 107-112. |
71 | YANG X, ZHAO Y, STREET G M, et al. Classification of broiler behaviours using triaxial accelerometer and machine learning[J]. Animal: An international journal of animal bioscience, 2021, 15(7): ID 100269. |
72 | 孙爱东, 秦清明, 尹令, 等. 马岗鹅个体产蛋行为规律的监控记录与分析[J]. 中国家禽, 2015, 37(21): 64-67. |
SUN A D, QIN Q M, YIN L, et al. Monitoring record and analysis of individual egg laying behavior law of Magang goose[J]. China poultry, 2015, 37(21): 64-67. | |
73 | 李丽华, 李久熙, 于尧, 等. 一种笼养蛋鸭育种信息自动采集和标记装置: CN205962312U[P]. 2017-02-22. |
74 | 肖德琴, 谭祖杰. 智慧水禽服务平台: 2022SR0345938[P]. 2021-12-01. |
/
〈 |
|
〉 |