five

中药材GMP合规生产加工工艺参数及质量验收数据集

收藏
安徽省数据知识产权登记平台2025-12-15 更新2026-01-07 收录
下载链接:
http://58.56.66.75:14401/#/registerAnnouncementDetail?id=a43a235e-9fd2-47bb-8cd7-ec223c25b554&state=2
下载链接
链接失效反馈
官方服务:
资源简介:
数据集涵盖药材编号、药材名称、药材基原、产地、采收季节、初始含水率(%)、杂质含量(%)、霉变比例(%)、初始等级、预处理方式、清洗方式、清洗时长(min)、干燥方式、干燥温度(℃)、干燥时长(h)、切制规格、炮制方法、炮制时长(min)、最终含水率(%)、最终等级、成品合格率(%)、加工批次等核心维度,系统展现了不同生产加工条件下的药材品质特征与质量差异。该数据集能够精准拆解各关键加工环节及工艺参数对中药材最终质量的影响权重与作用边界,为企业构建GMP合规标准化生产体系、优化精细化加工方案提供量化依据,也为中药材采购验收、生产过程管控、加工工艺优化、成品质量检验等核心生产环节提供数据支撑。

This dataset covers core dimensions including herb serial number, herb name, botanical origin of medicinal herbs, production area, harvest season, initial moisture content (%), impurity content (%), mildew ratio (%), initial grade, pretreatment method, cleaning method, cleaning duration (min), drying method, drying temperature (℃), drying duration (h), cutting specification, processing method, processing duration (min), final moisture content (%), final grade, qualified product rate (%), and processing batch. It systematically presents the quality characteristics and quality differences of traditional Chinese medicinal materials under various production and processing conditions. This dataset can accurately dissect the influence weights and action boundaries of each key processing link and process parameter on the final quality of traditional Chinese medicinal materials. It provides quantitative evidence for enterprises to build GMP-compliant standardized production systems and optimize refined processing solutions, and also offers data support for core production links such as procurement and acceptance of traditional Chinese medicinal materials, production process control, processing technology optimization, and finished product quality inspection.
提供机构:
安徽盛海堂中药饮片有限公司
创建时间:
2025-12-15
搜集汇总
数据集介绍
main_image_url
背景与挑战
背景概述
该数据集系统收录了中药材从原料到成品的全生产加工过程,涵盖药材基原、产地、采收季节、初始含水率、杂质含量、霉变比例、预处理、清洗、干燥、切制、炮制等核心工艺参数,以及最终含水率、等级和成品合格率等质量指标。它通过量化分析不同加工条件下的品质特征,精准拆解关键环节对药材质量的影响权重,为企业构建GMP合规标准化生产体系、优化精细化加工方案提供数据支撑,并服务于采购验收、生产过程管控和成品质量检验等核心环节。
以上内容由遇见数据集搜集并总结生成
二维码
社区交流群
二维码
科研交流群
商业服务