Estimating soil properties within a field using hyperspectral remote sensing
US-2020337212-A1 · Oct 29, 2020 · US
US11080798B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11080798-B2 |
| Application number | US-201514846659-A |
| Country | US |
| Kind code | B2 |
| Filing date | Sep 4, 2015 |
| Priority date | Sep 12, 2014 |
| Publication date | Aug 3, 2021 |
| Grant date | Aug 3, 2021 |
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A computer-implemented method for managing crop harvesting activities is implemented by a harvest advisor computing device in communication with a memory. The method includes receiving an initial date of a crop within a field, receiving an initial moisture value associated with the crop and the initial date, and receiving a target harvest moisture value associated with the crop. The method also includes receiving field condition data associated with the field. The method further includes computing, by the harvest advisor, a target harvest date for the crop based at least in part on the initial date, the initial moisture value, the field condition data, and the target harvest moisture value, and displaying the target harvest date for the crop to the grower for harvest planning. The target harvest date indicates a date at which the crop will have a present moisture value approximately equal to the target harvest moisture value.
Opening claim text (preview).
The invention claimed is: 1. One or more non-transitory computer-readable storage media for managing agricultural activities having computer-executable instructions embodied thereon, wherein, when executed by at least one processor, the computer-executable instructions cause the processor to: receive a black layer date at which a crop growing within a field reaches its maturity; receive an initial moisture value which indicates a moisture percentage of determined for the crop as measured on the black layer date; receive a desired target harvest moisture value which indicates a moisture percentage that is desired for the crop at a future harvest date; receive physical sensor data from at least one or more physical sensors installed throughout the field via a computer network connection established between a computing device and the one or more physical sensors; compute field condition data associated with the field based at least in part on the physical sensor data; predict a predicted target harvest date for harvesting the crop in the future, wherein the predicted target harvesting date is a date at which the crop will reach a moisture value approximately equal to the desired target harvest moisture value; wherein the predicted target harvest date is predicted based at least in part on the black layer date, the initial moisture value, the field condition data, and the desired target harvest moisture value; compute, by the computing device, a risk value that represents a numerical score and is determined based at least in part on the field condition data and two or more of: pesticide application date, a pesticide product type, a pesticide formulation, a pesticide usage rate, a pesticide amount sprayed, or a pesticide source identifier; update, by the computing device, the predicted target harvest date based, at least in part, on the computed risk value, wherein updating the predicted target harvest date comprises updating a date of crop harvest for which harvest yield of the crop is maximized; send the updated predicted target harvest date to a user device via a computer network connection established between the computing device and the user device; and display, by the user device, the updated predicted target harvest date for the crop. 2. The one or more non-transitory computer-readable storage media in accordance with claim 1 , wherein the computer-executable instructions also cause the processor to predict the predicted target harvest date based at least in part on estimated field condition data for the field. 3. The one or more non-transitory computer-readable storage media in accordance with claim 1 , wherein reception of a black layer date of a crop includes one or more of (i) receiving a provided maturity date of the crop from the user device and (ii) computing, by the processor, an estimated maturity date of the crop based at least in part on one or more of a planting date of the crop and field condition data. 4. The one or more non-transitory computer-readable storage media in accordance with claim 1 , wherein reception of an initial moisture value includes one or more of (i) receiving a provided moisture value of the crop on a maturity date from the user device and (ii) computing, by the computing device, an estimated moisture value of the crop on the maturity date. 5. The one or more non-transitory computer-readable storage media in accordance with claim 1 , wherein the computer-executable instructions also cause the processor to: identify an upcoming harvest risk near the predicted target harvest date; and display the upcoming harvest risk to the user device. 6. The one or more non-transitory computer-readable storage media in accordance with claim 1 , wherein the crop is corn, wherein the black layer date is a black layer date for the corn. 7. The one or more non-transitory computer-readable storage media in accordance with claim 1 , wherein the computer-executable instructions also cause the processor to: compute an additional predicted target harvest date for an additional crop on an additional field; compute a harvest plan for the field and the additional field based at least in part on the predicted target harvest date and the additional predicted target harvest date; and provide the harvest plan to the user device. 8. The one or more non-transitory computer-readable storage media in accordance with claim 7 , wherein computing a harvest plan further includes: identifying a logistical feature including one or more of (i) a dry down cost, (ii) harvesting equipment availability, and (iii) field location data; and altering one or more of the predicted target harvest date and the additional predicted target harvest date based at least in part on the logistical feature. 9. A method comprising: receiving a black layer date at which a crop growing within a field reaches its maturity; receiving an initial moisture value which indicates a moisture percentage of determined for the crop as measured on the black layer date; receiving a desired target harvest moisture value which indicates a moisture percentage that is desired for the crop at a future harvest date; receiving physical sensor data from at least one or more physical sensors installed throughout the field via a computer network connection established between a computing device and the one or more physical sensors; compute field condition data associated with the field based at least in part on the physical sensor data; predicting a predicted target harvest date for harvesting the crop in the future, wherein the predicted target harvesting date is a date at which the crop will reach a moisture value approximately equal to the desired target harvest moisture value; wherein the predicted target harvest date is predicted based at least in part on the black layer date, the initial moisture value, the field condition data, and the desired target harvest moisture value; computing, by the computing device, a risk value that represents a numerical score and is determined based at least in part on the field condition data and two or more of: pesticide application date, a pesticide product type, a pesticide formulation, a pesticide usage rate, a pesticide amount sprayed, or a pesticide source identifier; updating, by the computing device, the predicted target harvest date based, at least in part, on the computed risk value, wherein updating the predicted target harvest date comprises updating a date of crop harvest for which harvest yield of the crop is maximized; sending the updated predicted target harvest date to a user device via a computer network connection established between the computing device and the user device; and displaying, by the user device, the updated predicted target harvest date for the crop. 10. The method of claim 9 , wherein the computer-executable instructions also cause the processor to predict the predicted target harvest date based at least in part on estimated field condition data for the field. 11. The method of claim 9 , wherein reception of a black layer date of a crop includes one or more of (i) receiving a provided maturity date of the crop from the user device and (ii) computing, by the processor, an estimated maturity date of the crop based at least in part on one or more of a planting date of the crop and field condition data. 12. The method of claim 9 , wherein reception of an initial moisture value includes one or more of (i) receiving a provided moisture value of the crop on a maturity date from the user device and (ii) computing, by the computing device, an estimated moisture value of the crop on the maturity date. 13. The method of c
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