Good Growth Plan 2014-2019 - Ecuador
收藏microdata.worldbank.org2025-01-21 收录
下载链接:
https://microdata.worldbank.org/index.php/catalog/5623
下载链接
链接失效反馈官方服务:
资源简介:
Abstract
---------------------------
Syngenta is committed to increasing crop productivity and to using limited resources such as land, water and inputs more efficiently. Since 2014, Syngenta has been measuring trends in agricultural input efficiency on a global network of real farms. The Good Growth Plan dataset shows aggregated productivity and resource efficiency indicators by harvest year. The data has been collected from more than 4,000 farms and covers more than 20 different crops in 46 countries. The data (except USA data and for Barley in UK, Germany, Poland, Czech Republic, France and Spain) was collected, consolidated and reported by Kynetec (previously Market Probe), an independent market research agency. It can be used as benchmarks for crop yield and input efficiency.
Geographic coverage
---------------------------
National coverage
Analysis unit
---------------------------
Agricultural holdings
Kind of data
---------------------------
Sample survey data [ssd]
Sampling procedure
---------------------------
A. Sample design
Farms are grouped in clusters, which represent a crop grown in an area with homogenous agro- ecological conditions and include comparable types of farms. The sample includes reference and benchmark farms. The reference farms were selected by Syngenta and the benchmark farms were randomly selected by Kynetec within the same cluster.
B. Sample size
Sample sizes for each cluster are determined with the aim to measure statistically significant increases in crop efficiency over time. This is done by Kynetec based on target productivity increases and assumptions regarding the variability of farm metrics in each cluster. The smaller the expected increase, the larger the sample size needed to measure significant differences over time. Variability within clusters is assumed based on public research and expert opinion. In addition, growers are also grouped in clusters as a means of keeping variances under control, as well as distinguishing between growers in terms of crop size, region and technological level. A minimum sample size of 20 interviews per cluster is needed. The minimum number of reference farms is 5 of 20. The optimal number of reference farms is 10 of 20 (balanced sample).
C. Selection procedure
The respondents were picked randomly using a “quota based random sampling” procedure. Growers were first randomly selected and then checked if they complied with the quotas for crops, region, farm size etc. To avoid clustering high number of interviews at one sampling point, interviewers were instructed to do a maximum of 5 interviews in one village.
BF Screened from Ecuador were from provincia Los Rios/Carchi and were selected based on the following criterion:
- Mid - High tech adoption (Seed Treatment, Weed & insect control, fungal diseases control
Mode of data collection
---------------------------
Face-to-face [f2f]
Research instrument
---------------------------
Data collection tool for 2019 covered the following information:
(A) PRE- HARVEST INFORMATION
PART I: Screening
PART II: Contact Information
PART III: Farm Characteristics
a. Biodiversity conservation
b. Soil conservation
c. Soil erosion
d. Description of growing area
e. Training on crop cultivation and safety measures
PART IV: Farming Practices - Before Harvest
a. Planting and fruit development - Field crops
b. Planting and fruit development - Tree crops
c. Planting and fruit development - Sugarcane
d. Planting and fruit development - Cauliflower
e. Seed treatment
(B) HARVEST INFORMATION
PART V: Farming Practices - After Harvest
a. Fertilizer usage
b. Crop protection products
c. Harvest timing & quality per crop - Field crops
d. Harvest timing & quality per crop - Tree crops
e. Harvest timing & quality per crop - Sugarcane
f. Harvest timing & quality per crop - Banana
g. After harvest
PART VI - Other inputs - After Harvest
a. Input costs
b. Abiotic stress
c. Irrigation
See all questionnaires in external materials tab
Cleaning operations
---------------------------
Data processing:
Kynetec uses SPSS (Statistical Package for the Social Sciences) for data entry, cleaning, analysis, and reporting. After collection, the farm data is entered into a local database, reviewed, and quality-checked by the local Kynetec agency. In the case of missing values or inconsistencies, farmers are re-contacted. In some cases, grower data is verified with local experts (e.g. retailers) to ensure data accuracy and validity. After country-level cleaning, the farm-level data is submitted to the global Kynetec headquarters for processing. In the case of missing values or inconsistences, the local Kynetec office was re-contacted to clarify and solve issues.
Quality assurance
Various consistency checks and internal controls are implemented throughout the entire data collection and reporting process in order to ensure unbiased, high quality data.
• Screening: Each grower is screened and selected by Kynetec based on cluster-specific criteria to ensure a comparable group of growers within each cluster. This helps keeping variability low.
• Evaluation of the questionnaire: The questionnaire aligns with the global objective of the project and is adapted to the local context (e.g. interviewers and growers should understand what is asked). Each year the questionnaire is evaluated based on several criteria, and updated where needed.
• Briefing of interviewers: Each year, local interviewers - familiar with the local context of farming -are thoroughly briefed to fully comprehend the questionnaire to obtain unbiased, accurate answers from respondents.
• Cross-validation of the answers:
o Kynetec captures all growers' responses through a digital data-entry tool. Various logical and consistency checks are automated in this tool (e.g. total crop size in hectares cannot be larger than farm size)
o Kynetec cross validates the answers of the growers in three different ways:
1. Within the grower (check if growers respond consistently during the interview)
2. Across years (check if growers respond consistently throughout the years)
3. Within cluster (compare a grower's responses with those of others in the group)
o All the above mentioned inconsistencies are followed up by contacting the growers and asking them to verify their answers. The data is updated after verification. All updates are tracked.
• Check and discuss evolutions and patterns: Global evolutions are calculated, discussed and reviewed on a monthly basis jointly by Kynetec and Syngenta.
• Sensitivity analysis: sensitivity analysis is conducted to evaluate the global results in terms of outliers, retention rates and overall statistical robustness. The results of the sensitivity analysis are discussed jointly by Kynetec and Syngenta.
• It is recommended that users interested in using the administrative level 1 variable in the location dataset use this variable with care and crosscheck it with the postal code variable.
Data appraisal
---------------------------
Due to the above mentioned checks, irregularities in fertilizer usage data were discovered which had to be corrected:
For data collection wave 2014, respondents were asked to give a total estimate of the fertilizer NPK-rates that were applied in the fields. From 2015 onwards, the questionnaire was redesigned to be more precise and obtain data by individual fertilizer products. The new method of measuring fertilizer inputs leads to more accurate results, but also makes a year-on-year comparison difficult. After evaluating several solutions to this problems, 2014 fertilizer usage (NPK input) was re-estimated by calculating a weighted average of fertilizer usage in the following years.
摘要
---------------------------
先正达致力于提升作物生产力,并更有效地利用有限的资源,如土地、水资源和投入品。自2014年起,先正达在全球真实农场网络中测量农业投入品效率的趋势。‘良好增长计划’数据集展示了按收获年份汇总的生产力和资源效率指标。数据收集自超过4000个农场,覆盖了46个国家中超过20种不同的作物。数据(除美国数据和英国、德国、波兰、捷克共和国、法国和西班牙的 barley 数据外)由独立市场研究机构Kynetec(前身为Market Probe)收集、整合并报告。这些数据可作为作物产量和投入效率的基准。
地理覆盖范围
---------------------------
国家覆盖范围
分析单元
---------------------------
农业经营单位
数据类型
---------------------------
样本调查数据 [ssd]
抽样程序
---------------------------
A. 样本设计
农场被分组成集群,这些集群代表了在具有同质农业生态条件的地区种植的作物,并包括可比类型的农场。样本包括参考和基准农场。参考农场由先正达选择,而基准农场由Kynetec在同一集群内随机选择。
B. 样本量
每个集群的样本量是根据旨在衡量随着时间的推移作物效率的统计学上显著增加而确定的。这是基于目标生产力的增加和每个集群中农场指标变异性假设由Kynetec进行的。预期增加越小,需要测量的样本量就越大,以衡量时间上的显著差异。集群内的变异性基于公开研究和专家意见。此外,种植者也按集群分组,作为控制方差和控制种植者在作物规模、地区和技术水平方面的差异的手段。每个集群需要至少20次访谈。参考农场的最少数量为20个中的5个。参考农场的理想数量为20个中的10个(平衡样本)。
C. 选择程序
受访者通过“配额随机抽样”程序随机选择。首先随机选择种植者,然后检查他们是否遵守作物、地区、农场规模等配额。为了避免在单一抽样点集中进行大量访谈,访谈员被指示在一个村庄内最多进行5次访谈。
BF来自厄瓜多尔的受访者来自Los Rios/Carchi省,并根据以下标准进行选择:
- 中等到高度技术采用(种子处理、杂草和害虫控制、真菌病害控制
数据收集方式
---------------------------
面对面 [f2f]
研究工具
---------------------------
2019年的数据收集工具涵盖了以下信息:
(A) 采收前信息
第一部分:筛选
第二部分:联系信息
第三部分:农场特征
a. 生物多样性保护
b. 土壤保护
c. 土壤侵蚀
d. 种植区域描述
e. 作物栽培和安全措施培训
第四部分:采收前农业实践
a. 种植和果实发育 - 田地作物
b. 种植和果实发育 - 灌木作物
c. 种植和果实发育 - 甘蔗
d. 种植和果实发育 - 花菜
e. 种子处理
(B) 采收信息
第五部分:采收后农业实践
a. 肥料使用
b. 作物保护产品
c. 每种作物的采收时间和质量 - 田地作物
d. 每种作物的采收时间和质量 - 灌木作物
e. 每种作物的采收时间和质量 - 甘蔗
f. 每种作物的采收时间和质量 - 香蕉
g. 采收后
第六部分 - 采收后其他投入
a. 投入成本
b. 非生物胁迫
c. 灌溉
查看所有调查问卷在外部材料选项卡中
数据清洗操作
---------------------------
数据处理:
Kynetec使用SPSS(社会科学统计软件包)进行数据录入、清洗、分析和报告。在收集后,农场数据被输入到本地数据库,由本地Kynetec机构进行审查和质量检查。在出现缺失值或不一致的情况下,将重新联系农民。在某些情况下,通过当地专家(例如零售商)验证种植者数据,以确保数据准确性和有效性。在国家层面清洗后,农场级数据提交给全球Kynetec总部进行处理。在出现缺失值或不一致的情况下,将重新联系本地Kynetec办公室以澄清和解决问题。
质量保证
在整个数据收集和报告过程中实施了各种一致性检查和内部控制,以确保获得无偏见、高质量的数据。
• 筛选:每个种植者都由Kynetec根据集群特定标准筛选和选择,以确保每个集群内种植者的可比性。这有助于保持变异性低。
• 问卷评估:问卷与项目全球目标一致,并根据当地环境进行调整(例如,访谈员和种植者应理解所提问题)。每年根据几个标准评估问卷,并在必要时进行更新。
• 访谈员简报:每年,熟悉当地农业环境的当地访谈员将进行全面简报,以充分理解问卷,从而从受访者那里获得无偏见、准确的答案。
• 答案的交叉验证:
o Kynetec通过数字数据录入工具捕捉所有种植者的回答。在此工具中自动执行各种逻辑和一致性检查(例如,公顷总面积不能大于农场规模)
o Kynetec通过三种不同的方式交叉验证种植者的答案:
1. 在种植者内部(检查种植者在访谈中是否做出一致的回答)
2. 在年份之间(检查种植者在多年中是否做出一致的回答)
3. 在集群内部(将种植者的回答与群体中其他人的回答进行比较)
o 所有上述不一致之处都将通过联系种植者并要求他们核实其回答来跟进。在验证后更新数据。所有更新都将被跟踪。
• 检查和讨论演变和模式:Kynetec和先正达每月共同计算、讨论和审查全球演变。
• 敏感性分析:进行敏感性分析以评估全球结果,包括异常值、保留率和整体统计稳健性。Kynetec和先正达共同讨论敏感性分析的结果。
• 建议对有兴趣使用位置数据集中行政级别1变量的用户,在使用此变量时需谨慎,并与其邮政编码变量进行交叉检查。
数据评估
---------------------------
由于上述检查,发现了肥料使用数据的不规律性,需要进行更正:
对于2014年数据收集波次,受访者被要求提供在田间应用的NPK肥料总估计量。从2015年开始,问卷被重新设计以更加精确,并通过个别肥料产品获取数据。衡量肥料投入的新方法导致结果更加准确,但也使得年度间的比较变得困难。在评估了几个解决方案后,通过计算后续年份肥料使用量的加权平均值重新估计了2014年的肥料使用量(NPK投入)。
提供机构:
microdata.worldbank.org



