DeLorenzo M A, Spreen T H, Bryan G R, Beede D K, Van Arendonk J A
University of Florida, Gainesville 32611-0701.
J Dairy Sci. 1992 Mar;75(3):885-96. doi: 10.3168/jds.S0022-0302(92)77829-1.
Dynamic programming to solve the Markov decision process problem of optimal insemination and replacement decisions was adapted to address large dairy herd management decision problems in the US. Expected net present values of cow states (151,200) were used to determine the optimal policy. States were specified by class of parity (n = 12), production level (n = 15), month of calving (n = 12), month of lactation (n = 16), and days open (n = 7). Methodology optimized decisions based on net present value of an individual cow and all replacements over a 20-yr decision horizon. Length of decision horizon was chosen to ensure that optimal policies were determined for an infinite planning horizon. Optimization took 286 s of central processing unit time. The final probability transition matrix was determined, in part, by the optimal policy. It was estimated iteratively to determine post-optimization steady state herd structure, milk production, replacement, feed inputs and costs, and resulting cash flow on a calendar month and annual basis if optimal policies were implemented. Implementation of the model included seasonal effects on lactation curve shapes, estrus detection rates, pregnancy rates, milk prices, replacement costs, cull prices, and genetic progress. Other inputs included calf values, values of dietary TDN and CP per kilogram, and discount rate. Stochastic elements included conception (and, thus, subsequent freshening), cow milk production level within herd, and survival. Validation of optimized solutions was by separate simulation model, which implemented policies on a simulated herd and also described herd dynamics during transition to optimized structure.
动态规划用于解决最优授精和替换决策的马尔可夫决策过程问题,被应用于解决美国大型奶牛群管理决策问题。奶牛状态(151,200种)的预期净现值用于确定最优策略。状态由胎次类别(n = 12)、生产水平(n = 15)、产犊月份(n = 12)、泌乳月份(n = 16)和空怀天数(n = 7)来指定。该方法基于个体奶牛的净现值以及20年决策期内所有替换奶牛的净现值来优化决策。选择决策期长度以确保为无限规划期确定最优策略。优化过程花费了286秒的中央处理器时间。最终的概率转移矩阵部分由最优策略决定。通过迭代估计来确定优化后的稳态牛群结构、牛奶产量、替换情况、饲料投入和成本,以及如果实施最优策略,按日历月和年度计算的现金流。该模型的实施包括泌乳曲线形状、发情检测率、妊娠率、牛奶价格、替换成本、淘汰价格和遗传进展的季节性影响。其他输入包括犊牛价值、每千克日粮可消化总养分和粗蛋白的价值以及贴现率。随机因素包括受孕(以及随后的产犊)、牛群内奶牛的牛奶生产水平和存活情况。通过单独的模拟模型对优化后的解决方案进行验证,该模拟模型在模拟牛群上实施策略,并描述向优化结构转变过程中的牛群动态。