843710 (Harmonized System 1992 for 6-digit)

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Overview This page contains the latest trade data of Machines to clean, sort, grade seed,grain, dry legume. In 2022, Machines to clean, sort, grade seed,grain, dry legume were the world's 2493rd most traded product, with a total trade of $753M. Between 2021 and 2022 the exports of Machines to clean, sort, grade seed,grain, dry legume grew by 3.46%, from $727M to $753M. Trade in Machines to clean, sort, grade seed,grain, dry legume represent 0.0032% of total world trade.

Machines to clean, sort, grade seed,grain, dry legume are a part of Mill Machinery.

Exports In 2022 the top exporters of Machines to clean, sort, grade seed,grain, dry legume  were China ($257M), United Kingdom ($59.4M), Germany ($48.2M), Turkey ($44.2M), and Italy ($41.5M).

Imports In 2022 the top importers of Machines to clean, sort, grade seed,grain, dry legume were India ($113M), United States ($47M), Nigeria ($28.3M), Russia ($24.8M), and Turkey ($24.7M).

Ranking Machines to clean, sort, grade seed,grain, dry legume ranks 2044th in the Product Complexity Index (PCI).

Description Seed processing machines are typically used to sort, clean, grade, and dry crops. Graders and sorters use screens to distinguish different sizes of products. The screens are often perforated metal sheets with small openings. The screens are typically mounted on a rotating drum or wheel, and the seeds are blown through the screen by a strong air current. The seeds that are too large to pass through the screen are separated from those that do. Machines that blow air through screens are often called air classifiers. Air classifiers are typically used to clean grain and seed.

Latest Data

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The following visualization shows the latest trends on Machines to clean, sort, grade seed,grain, dry legume. Countries are shown based on data availability.

For a full breakdown of trade patterns, visit the trend explorer or the product in country profile.

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* Trade values are converted to USD using each month's exchange rate. For December 2023 data, the exchange rate from December 30, 2023 is used.

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Historical Data

Exporters and Importers

Top Origin (2022)China$257M
Top Destination (2022)India$113M

In 2022 Machines to clean, sort, grade seed,grain, dry legume were the world's 2493rd most traded product (out of 4,648).

In 2022, the top exporters of Machines to clean, sort, grade seed,grain, dry legume were China ($257M), United Kingdom ($59.4M), Germany ($48.2M), Turkey ($44.2M), and Italy ($41.5M).

In 2022, the top importers of Machines to clean, sort, grade seed,grain, dry legume were India ($113M), United States ($47M), Nigeria ($28.3M), Russia ($24.8M), and Turkey ($24.7M).

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Exporters of Machines to clean, sort, grade seed,grain, dry legume (2022)
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Importers of Machines to clean, sort, grade seed,grain, dry legume (2022)
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Market Dynamics

Color
Top Origin Growth (2021 -  2022)China$20.4M
Top Destination Growth (2021 -  2022)India$25.6M

Between 2021 and 2022, the exports of Machines to clean, sort, grade seed,grain, dry legume grew the fastest in China ($20.4M), Italy ($9.96M), United States ($6.71M), India ($5.73M), and Switzerland ($5.57M).

Between 2021 and 2022, the fastest growing importers of Machines to clean, sort, grade seed,grain, dry legume were India ($25.6M), Brazil ($8.89M), Nigeria ($8.14M), United States ($5.98M), and Belgium ($4.82M).

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Exporters of Machines to clean, sort, grade seed,grain, dry legume (2021 - 2022)

Importers of Machines to clean, sort, grade seed,grain, dry legume (2021 - 2022)

Market Concentration

Value

This chart shows the evolution of the market concentration of exports of Machines to clean, sort, grade seed,grain, dry legume.

In 2022, market concentration measured using Shannon Entropy, was 3.84. This means that most of the exports of Machines to clean, sort, grade seed,grain, dry legume are explained by 14 countries.

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Value of Exports in Machines to clean, sort, grade seed,grain, dry legume

Net Trade

TOP NET EXPORTER (2022)China$249M
TOP NET IMPORTER (2022)India$84.4M

This map shows which countries export or import more of Machines to clean, sort, grade seed,grain, dry legume. Each country is colored based on the difference in exports and imports of Machines to clean, sort, grade seed,grain, dry legume during 2022.

In 2022, the countries that had a largest trade value in exports than in imports of Machines to clean, sort, grade seed,grain, dry legume were China ($249M), United Kingdom ($52.4M), Italy ($31M), Germany ($30M), and Denmark ($26.8M).

In 2022, the countries that had a largest trade value in imports than in exports of Machines to clean, sort, grade seed,grain, dry legume were India ($84.4M), Nigeria ($28.1M), Vietnam ($18M), Indonesia ($17.4M), and Kazakhstan ($17.4M).

Net Trade (2022)

Country Comparison

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This visualization shows the countries that have an important ratio of their trade related to Machines to clean, sort, grade seed,grain, dry legume.
It is possible to select the main countries that export or import Machines to clean, sort, grade seed,grain, dry legume in the world, or by continent, as well as select the measure of interest.

Top 10 Exporters Countries of Machines to clean, sort, grade seed,grain, dry legume by percentage of total exports

Product Complexity

Diversification Frontier

Specialization

The Complexity-Relatedness diagram compares the risk and the strategic value of a product's potential export opportunities. Relatedness is predictive of the probability that a country increases its exports in a product. Complexity, is associated with higher levels of income, economic growth potential, lower income inequality, and lower emissions.

Relatedness vs Country Complexity (2022)

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