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系水力

系水力的相关文献在1983年到2022年内共计122篇,主要集中在畜牧、动物医学、狩猎、蚕、蜂、轻工业、手工业、水产、渔业 等领域,其中期刊论文101篇、会议论文6篇、专利文献55967篇;相关期刊54种,包括猪业科学、动物营养学报、养猪等; 相关会议6种,包括中国农业工程学会2013年学术年会、广西畜牧兽医学会养猪学分会2007年年会、中国畜牧兽医学会第一届中国养猪生产和疾病控制技术大会等;系水力的相关文献由397位作者贡献,包括周光宏、张伟力、王希彪等。

系水力—发文量

期刊论文>

论文:101 占比:0.18%

会议论文>

论文:6 占比:0.01%

专利文献>

论文:55967 占比:99.81%

总计:56074篇

系水力—发文趋势图

系水力

-研究学者

  • 周光宏
  • 张伟力
  • 王希彪
  • 王文娟
  • 何佳文
  • 刘家忠
  • 孙芳
  • 彭彦昆
  • 李培龙
  • 杨昊欣
  • 期刊论文
  • 会议论文
  • 专利文献

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    • 李贺贺; 程炳金; 马雷国
    • 摘要: 本文旨在研究酵母硒对Z型北京鸭生长性能、胸肉系水力及硒含量的影响。选择15日龄(体重为700克左右)的Z型北京鸭作为试验鸭,随机分为两组,其中一组作为试验,一组作为对照。对照组为正常的商品饲料,试验组额外添加酵母硒(3000毫克/千克)100克/吨。结果显示,实验组较对照组相比,肉鸭生产性能及胸肉系水力没有显著差异,胸肉硒含量差异较大。
    • 王文涛; 田明; 刘娣; 何鑫淼; 吴赛辉; 何海娟; 冯艳忠; 肖龑; 于晓龙; 陈赫书; 刘自广
    • 摘要: 为了研究发酵饲料对巴民杂交猪肉质性能的影响,试验将12头体重60 kg的巴民杂交猪随机分成2组,每组6头,分别饲喂益生菌制备发酵饲料(试验组)和常规饲料(对照组)70 d至体重110 kg左右,对试验猪只的背最长肌肉色、系水力、滴水损失和肌内脂肪含量指标进行了研究.结果表明:与对照组肉品相比,试验组的亮度值(L*值)和黄度值(b*值)低于对照组,红度值(a*值)高于对照组;试验组与对照组相比系水力提高了0.44个百分点,试验组与对照组相比滴水损失降低了0.07个百分点,试验组与对照组相比肌内脂肪含量提高了0.14个百分点,但差异不显著(P>0.05),试验组在肉色、系水力、肌内脂肪等指标方面皆有所改善.试验结果说明饲喂发酵饲料能够在一定程度上提高巴民杂交猪肉品肉质,对其能够更好地满足人们对优质肉品需求具有重要意义.
    • 倪和民; 赵延辉; 邢凯; 张永红; 郭勇; 赵俊金; 邓晓彬; 刘燊; 刘建
    • 摘要: 我国是生猪生产大国,我国人民的主要肉食来源为猪肉,现如今猪肉的质量问题也受到人们的广泛关注。人们通常所说的猪肉质量主要包括pH、肉色、嫩度、肌肉的系水力和肌内脂肪含量等。在影响猪肉质量的众多因素中,肌内脂肪(Intramuscular Fat,IMF)的含量是一个重要的指标,肌内脂肪与肉质有正相关。猪肉肌内脂肪存在引起人们越来越高的关注。适宜的猪肉肌内脂肪(IMF)含量在2%~3.5%之间,肌内脂肪含量过低,猪肉品质差;IMF含量过高,影响销售。
    • 张安青; 姜海波; 安苗; 黎明; 王常安; 邵俭; 王静波; 文明; 程振涛
    • 摘要: 本试验旨在研究杜仲皮水提物对虹鳟(Oncorhynchus mykiss)生长和肌肉品质、质构特性的影响.选取体质健康、平均体重(145.56±4.12)g的虹鳟450尾,随机分为5个组,每组3个重复,每个重复30尾.各组分别在基础饲料中添加浓度为0(对照组)、0.5%、1.0%、2.0%和4.0%的杜仲皮水提物.试验期为10周.结果表明:1)各组之间终末体重、增重率、成活率、特定生长率均无显著差异(P>0.05).2)各组间肌肉pH45 min、pH24 h均无显著差异(P>0.05).对照组肌肉pH下降率最高,且显著高于2.0%和4.0%组(P0.05),1.0%组肌肉滴水损失显著高于其他各组(P0.05),但均显著高于对照组(P<0.05).综合以上各项指标,建议饲料中添加浓度为4.0%杜仲皮水提物以改善虹鳟肌肉品质.
    • 陈凤仪
    • 摘要: 以感官评分、剪切力和系水力为评价指标,研究了单硬脂酸甘油酯、大豆磷脂和蔗糖脂肪酸酯对乳化香肠品质的影响.实验结果表明:3种乳化剂对乳化香肠品质均有不同程度影响,通过L9(34)正交试验得到3种乳化剂的最佳配比为:单硬脂酸甘油酯0.1g/kg、大豆磷脂1.5g/kg、蔗糖脂肪酸酯0.5g/kg,在此最佳配比下乳化香肠的品质最佳.
    • 李晓东; 高凯; 张敏
    • 摘要: 试验旨在研究负离子中药硒锗复合无抗制剂对育肥猪背最长肌营养物质、食用品质、贮藏品质的影响。试验选取体重在(40±1.0)kg的育肥猪64头,按照完全随机的原则分为对照组、试验Ⅰ组、试验Ⅱ组、试验Ⅲ组共4组,每组16头,4个重复。其中对照组饲喂基础日粮,试验Ⅰ组饲喂基础日粮+0.5%负离子中药硒锗复合无抗制剂,试验Ⅱ组饲喂基础日粮+0.5%酵母硒锗饲料添加剂,试验Ⅲ组饲喂基础日粮+0.5%中药矿物质复合制剂。试验期共90 d,其中包括预饲期10 d,正式试验80 d。试验结束后,每组屠宰4头育肥猪,取其背最长肌,在4°C冰箱中熟化24 h,然后进行相关肉品质的测定。试验结果表明:在育肥猪猪肉的营养物质中,试验Ⅰ组相对于对照组干物质、粗蛋白质含量均呈极显著的提高(P<0.01),粗脂肪含量呈显著降低(P<0.05),硒的含量有极显著的提高(P<0.01),锗含量的有显著的提高(P<0.05)。在猪肉的食用品质中,试验Ⅰ组猪肉的离心失水率与对照组相比呈极显著的降低(P<0.01),相对于试验Ⅱ、Ⅲ组呈显著的降低(P<0.05);试验Ⅰ组猪肉蒸煮失水率与对照组相比呈显著降低(P<0.05),剪切力呈极显著降低(P<0.01)。在育肥猪猪肉的贮藏品质中,与对照组相比,试验Ⅰ组猪肉贮藏前期的L*值呈显著的提高(P<0.05),a*值呈极显著的提高(P<0.01),试验Ⅰ组猪肉贮藏期内各阶段中的pH值和TVBN值均不同程度的低于同阶段对照组。综上,在育肥猪日粮中添加中药硒锗复合无抗制剂可显著提高育肥猪猪肉的硒、锗含量,提高育肥猪猪肉的系水力和嫩度,提高育肥猪的亮度并可适当延长育肥猪猪肉的贮藏期1~2 d,且复合制剂的添加效果优于单一添加剂。
    • 卢智; 柳青山; 朱俊玲
    • 摘要: 以鸡胸肉为原料,采用均匀注射法测定不同嫩化剂(木瓜蛋白酶、碱性蛋白酶、中性蛋白酶、风味蛋白酶以及氯化钙)处理后的鸡胸肉的蒸煮损失及滴水损失来比较其对鸡胸肉系水力的影响.结果表明:4种蛋白酶分别在浓度为0.0058 %、0.0083 %、0.0083 %、0.0083 %时,鸡胸肉的系水力最好;氯化钙的浓度为2.0 %时,鸡胸肉的系水力最好;4种蛋白酶分别与氯化钙混合后处理鸡胸肉的效果比使用单一酶制剂的效果好,且木瓜蛋白酶与氯化钙的组合效果最好;当木瓜蛋白酶:氯化钙为1:12(质量比)时,鸡胸肉的系水力最好.%The water-holding capacity was determined with chicken breast as experimental materials by cook-ing loss and drip loss.The different kinds of tenderizer,including papain protease,alkaline protease,neutral protease,flavor protease and calcium chloride,were respectively injected into chicken breast.The test showed that when the concentration of four kinds of protease was 0.005 8 %,0.008 3 %,0.008 3 % and 0.008 3 %,the water-holding of chicken breast was optimal.When the concentration of calcium chloride was 2.0 %,the water-holding of chicken breast was optimal.The effect of chicken breast injected by four kinds of protease combined with calcium chloride was better than using a single protease,and the effect of the combination of papain and calcium chloride was optimum.When the proportion of papain and calcium chloride was 1:12(mass ratio),the water-holding of chicken breast was optimal.
    • 王笑丹; 武瑞玾; 徐丽萍; 王莹
    • 摘要: In order to achieve the fast and efficient detection of water-holding capacity in meat products, this paper developed a rapid method to detect water-holding capacity in beef using color sensor and genetic algorithm. First of all, the beef was cut into samples with size of 4 cm × 1 cm × 0.5 cm. Then test paper, decorated by cobalt chloride, could change its color when it attached sample. The color can establish a certain relationship to water-holding capacity of the sample. However, it is not easy to judge the changed color of test paper by naked eye. Therefore, color sensor was applied to convert the detected color's spectrum into specific color parameters, which was manipulated by Arduino controller. Pressure method, as a traditional way to measure water-holding capacity in meat products, is precise but it costs more time and wastes more material. To establish a neural network prediction model of water-holding capacity, this paper set the color parameters as the input vector and set the water-holding capacity measured by the pressure method as the output value. Experimental data derived from 80 samples, which included 60 training samples and 20 testing samples. The back propagation (BP) neural network was trained by 60 samples. Besides, the accuracy of BP neural network was verified by 20 samples. However, the BP neural network had the deficiencies of insufficient network global research ability, slow convergence and local optimum iteration. The genetic algorithm optimized the weights and thresholds in BP neural network, and thus enhanced the accuracy of prediction. The fitness function of genetic algorithm was the sum of square error. After 100 iterations, the best fitness function was obtained. The weights and thresholds optimized by the genetic algorithm were put into the BP neural network, the BP neural network was retrained and the accuracy was tested. The result showed that the optimum attachment time of test paper was 20 s. The optimized BP neural network model based on genetic algorithm had a better ability for nonlinear approach. The determination coefficient of the regression line is 0.987, and the slope of the best linear regression equation is 0.96. This showed that the deviation between the predicted value and the actual measurement value of the BP neural network optimized by the genetic algorithm is very small. Thus the optimization of the model is successful. The prediction accuracy of the BP neural network model was improved from 90% to 95% after being optimized by genetic algorithm. Compared with the pressure method, using color sensor not only greatly shortened the detection time, but also reduced the waste of resources in the detection process. What was more, the cost of color sensor method was lower than NIR (near infrared) spectroscopy method. The predicted results from the optimized BP neural network based on genetic algorithm were better than BP neural network. This detection method is fast and accurate and has low cost. The results provide a reference for further development of intelligent detection equipment for meat products.%为了实现快速检测牛肉系水力,解决肉制品系水力检测不便的问题,该文研究了基于颜色传感器和遗传算法的牛肉系水力快速检测方法.优化了变色试纸与牛肉样品的最佳贴附时间,使用Arduino控制器操控颜色传感器采集试纸颜色参数;将80组牛肉样品分成60个训练组和20个验证组,应用遗传算法优化BP神经网络模型.研究结果表明:在系水力试纸的尺寸为5 cm×2 cm、氯化钴浸泡液浓度为3 g/mL的条件下,得到试纸最佳贴附时间为20 s;经遗传算法优化BP神经网络后,最佳线性回归方程的斜率为0.96,相关系数R2为0.987,优化后的神经网络模型对系水力等级的预测准确率从90%提高到95%;将检测时间降低到1 min之内,实现了对牛肉系水力等级的快速检测.该研究为进一步开发智能化的肉制品系水力快速检测设备提供了理论依据.
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