Characterizing Crop Water Use Dynamics in the Central Valley of California Using Landsat-Derived Evapotranspiration
"> Figure 1
<p>The Central Valley of California showing (<b>a</b>) the valley boundary used in this study along with Kern County and the Kern County Crop Parcels; and (<b>b</b>) the 2018 U.S. Department of Agriculture, National Agricultural Statistics Service (USDA-NASS) Cropland Data Layer for the Central Valley.</p> "> Figure 2
<p>The Central Valley for 2018 showing (<b>a</b>) the generalized top 10 crops identified by USDA-NASS CDL, (<b>b</b>) the SSEBop annual total actual ET for 2018, and (<b>c</b>) the change in SSEBop <span class="html-italic">ETa</span> from 2008 to 2018 (2018 <span class="html-italic">ETa</span> minus 2008 <span class="html-italic">ETa</span>).</p> "> Figure 3
<p>Top five crops in the Central Valley from 2008 to 2018 showing the SSEBop <span class="html-italic">ETa</span> mean (in mm) for the USDA-NASS CDL crop type, the bias-corrected area estimate (ha), water use volume (ha-m) and the net irrigation (ha-m). The area, water use, and net irrigation are scaled by 100,000 (i.e., 4 ha-m corresponds to 400,000 ha-m). 1 hectare = 2.47 acres. 1 hectare-meter = 8.107 acre-feet.</p> "> Figure 4
<p>Kern County showing (<b>a</b>) 1999 annual total SSEBop <span class="html-italic">ETa</span>, (<b>b</b>) major commodity parcels in 1999 identified by Kern County Department of Agriculture and Measurement Standards and filtered by maximum NDVI ≥ 0.5, (<b>c</b>) 2018 annual total SSEBop <span class="html-italic">ETa</span>, and (<b>d</b>) major commodity parcels in 2018 identified by Kern County Department of Agriculture and Measurement Standards and filtered by maximum NDVI ≥ 0.5.</p> "> Figure 5
<p>The top five crops in Kern County from 1999 to 2018 showing the SSEBop <span class="html-italic">ETa</span> mean (in mm) for the USDA-NASS CDL crop type, the bias-corrected area estimate (in hectares), water use volume (ha-m) and the net irrigation (ha-m) in hectare-meters. The area, water use, and net irrigation are scaled by 10,000 (i.e., 4 ha-m corresponds to 40,000 ha-m). 1 hectare = 2.47 acres. 1 hectare-meter = 8.107 acre-feet.</p> "> Figure 6
<p>Pixel-based Mann–Kendall trend analysis for all of Kern County based on annual SSEBop <span class="html-italic">ETa</span> from 1999 to 2018. The above graphic shows (<b>a</b>) the 20-year (1999–2018) mean annual total SSEBop <span class="html-italic">ETa</span>, (<b>b</b>) the Theil–Sen slope statistic on a per-pixel basis for the statistically significant pixels where the MK test <span class="html-italic">p</span>-value < 0.05 (95% confidence).</p> "> Figure 7
<p>Eight crop parcels that are identified as cotton fields in 1999–2003 but fields 1–4 transition to uncultivated agriculture and parcels 5–8 transition to almonds. Graphic shows (<b>a</b>) the current Google Earth imagery for the selected parcels, (<b>b</b>) the statistically significant pixels of the 1999–2018 Theil–Sen slope (blue indicates increasing slope and red indicated decreasing slope), and c the total water use for each of eight fields from 1999 to 2018.</p> ">
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Landsat
2.3. The SSEBop Modeling Approach
2.4. USDA-NASS Cropland Data Layer (CDL)
2.5. County Crop Acreage Reports
2.6. Kern County Crop Boundaries
2.7. Other Datasets
2.8. Water Use Estimates and Net Irrigation
2.9. Trend Analysis
3. Results
3.1. Crop Water Use in the Central Valley 2008–2018
3.2. County-Scale Crop Water Use—Kern County, 1999–2018
3.3. Field-Scale Analysis and Pixel-Based Mann–Kendall Trends
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Data Availability
References
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Crop Type | CDL 1 | Crop Reports 1 | % Bias |
---|---|---|---|
Alfalfa | 285,164 | 247,669 | 15% |
Almonds | 415,498 | 392,967 | 6% |
Corn | 83,820 | 62,504 | 34% |
Cotton | 111,169 | 108,328 | 3% |
Grapes | 216,628 | 244,110 | −11% |
Oranges | 57,601 | 65,721 | −12% |
Pistachios | 75,978 | 90,929 | −16% |
Rice | 215,794 | 208,871 | 3% |
Walnuts | 121,829 | 126,944 | −4% |
Winter Wheat | 155,343 | 129,594 | 20% |
Crop Type | Mean Crop Area (ha) 1 | 2008 Crop Area (ha) 1 [%] | 2018 Crop Area (ha) 1 [%] | % Change | 2012–2016 Drought (ha) 1 [%] |
---|---|---|---|---|---|
Almonds | 395,204 | 343,695 [21%] | 445,249 [27%] | 30% | 417,652 [6%] |
Grapes | 246,339 | 243,992 [15%] | 268,246 [16%] | 10% | 273,978 [11%] |
Alfalfa | 235,705 | 283,905 [18%] | 141,768 [9%] | −50% | 223,405 [−5%] |
Rice | 208,336 | 210,712 [13%] | 200,805 [12%] | −5% | 203,405 [−2%] |
Walnuts | 130,527 | 92,920 [6%] | 161,005 [10%] | 73% | 129,912 [< −1%] |
Winter Wheat | 118,101 | 146,169 [9%] | 62,256 [4%] | −57% | 108,738 [−8%] |
Cotton | 109,195 | 104,663 [6%] | 107,219 [7%] | 2% | 99,718 [−9%] |
Pistachios | 93,545 | 87,790 [5%] | 167,678 [10%] | 91% | 81,230 [−13%] |
Corn | 62,738 | 69,604 [4%] | 59,031 [4%] | −15% | 59,411 [−5%] |
Oranges | 27,152 | 26,837 [2%] | 18,619 [1%] | −31% | 26,810 [−1%] |
Crop Type | MK Statistic | p-Value | Theil–Sen Slope (ha/yr) 1 | Trend 2 |
---|---|---|---|---|
Alfalfa | −39 | 0.003 | −12,429 | − |
Almonds | 39 | 0.003 | 16,327 | + |
Corn | −21 | 0.119 | −3543 | # |
Cotton | −9 | 0.533 | −2038 | # |
Grapes | 29 | 0.029 | 6119 | + |
Oranges | −1 | 1.000 | −48 | # |
Pistachios | 27 | 0.043 | 6635 | + |
Rice | −23 | 0.087 | −3411 | # |
Walnuts | 49 | 0.000 | 6668 | + |
Winter Wheat | −37 | 0.005 | −7770 | − |
Crop Type | Mean Water Use (ha-m) 1 | 2008 Water Use (ha-m) 1 [%] | 2018 Water Use (ha-m) 1 [%] | % Change | 2012–2016 Drought (ha-m) 1 [%] |
---|---|---|---|---|---|
Almonds | 339,506 | 277,707 [23%] | 385,230 [33%] | 39% | 364,074 [7%] |
Rice | 218,544 | 247,717 [21%] | 197,711 [17%] | −20% | 213,144 [−2%] |
Alfalfa | 179,606 | 238,316 [20%] | 99,308 [9%] | −58% | 168,856 [−6%] |
Grapes | 126,840 | 121,819 [10%] | 132,561 [11%] | 9% | 136,772 [8%] |
Walnuts | 111,442 | 89,498 [7%] | 130,072 [11%] | 45% | 110,900 [< −1%] |
Cotton | 71,508 | 67,374 [6%] | 71,994 [6%] | 7% | 66,533 [−7%] |
Winter Wheat | 47,386 | 64,842 [5%] | 18,601 [2%] | −71% | 40,980 [−14%] |
Pistachios | 44,123 | 37,028 [3%] | 79,774 [7%] | 115% | 35,733 [−19%] |
Corn | 40,023 | 46,284 [4%] | 34,039 [3%] | −26% | 38,042 [−5%] |
Oranges | 17,913 | 17,714 [1%] | 10,940 [1%] | −38% | 16,825 [−6%] |
Crop Type | MK Statistic | p-Value | Theil–Sen Slope (ha-m/yr) 1 | Trend 2 |
---|---|---|---|---|
Alfalfa | −41 | 0.002 | −13,901 | − |
Almonds | 35 | 0.008 | 13,488 | + |
Corn | −23 | 0.087 | −2756 | # |
Cotton | −7 | 0.640 | −841 | # |
Grapes | 31 | 0.020 | 4042 | + |
Oranges | −13 | 0.350 | −382 | # |
Pistachios | 25 | 0.062 | 1963 | # |
Rice | −27 | 0.043 | −5433 | − |
Walnuts | 43 | 0.001 | 4300 | + |
Winter Wheat | −35 | 0.008 | −4086 | − |
Crop Type | Mean Crop Area (ha) 1 | 1999 Crop Area (ha) 1 [%] | 2018 Crop Area (ha) 1 [%] | % Change | 2012–2016 Drought (ha) 1 [%] |
---|---|---|---|---|---|
Almonds | 53,126 | 31,213 [14%] | 70,924 [38%] | 127% | 69,662 [31%] |
Cotton | 32,957 | 71,264 [32%] | 7,603 [4%] | −89% | 13,343 [−60%] |
Grapes | 32,778 | 30,261 [13%] | 35,141 [19%] | 16% | 34,951 [7%] |
Alfalfa | 31,652 | 37,568 [17%] | 16,438 [9%] | −56% | 27,922 [−12%] |
Pistachios | 16,247 | 8536 [4%] | 27,908 [15%] | 227% | 22,693 [40%] |
Oranges | 11,305 | 7861 [3%] | 11,484 [6%] | 46% | 12,565 [11%] |
Wheat | 9247 | 16,391 [7%] | 2885 [2%] | −82% | 5566 [−40%] |
Carrots | 8952 | 10,964 [5%] | 5537 [3%] | −49% | 8203 [−8%] |
Corn | 5597 | 4633 [2%] | 2622 [1%] | −43% | 5398 [−4%] |
Potatoes | 4913 | 7306 [3%] | 6293 [3%] | −14% | 4216 [−14%] |
Crop Type | MK Statistic | p-Value | Theil–Sen Slope (ha/yr) 1 | Trend 2 |
---|---|---|---|---|
Alfalfa | −113 | 0.000 | −758 | − |
Almonds | 175 | 0.000 | 2465 | + |
Carrots | −101 | 0.001 | −180 | − |
Corn | −62 | 0.048 | −116 | − |
Cotton | −159 | 0.000 | −3589 | − |
Grapes | 123 | 0.000 | 358 | + |
Oranges | 109 | 0.000 | 227 | + |
Pistachios | 179 | 0.000 | 1095 | + |
Potatoes | −71 | 0.023 | −165 | − |
Wheat | −111 | 0.000 | −560 | − |
Crop Type | Mean Water Use (ha-m) 1 | 1999 Water Use (ha-m) 1 [%] | 2018 Water Use (ha-m)1 [%] | % Change | 2012–2016 Drought (ha-m) 1 [%] |
---|---|---|---|---|---|
Almonds | 52,782 | 29,275 [18%] | 66,243 [48%] | 126% | 73,827 [40%] |
Alfalfa | 25,735 | 32,015 [20%] | 11,095 [8%] | −65% | 22,203 [−14%] |
Grapes | 21,574 | 17,790 [11%] | 21,823 [16%] | 23% | 23,605 [9%] |
Cotton | 19,383 | 41,075 [26%] | 3,895 [3%] | −91% | 7,600 [−61%] |
Pistachios | 12,451 | 6975 [4%] | 18,405 [13%] | 164% | 17,007 [37%] |
Oranges | 9740 | 7820 [5%] | 8198 [6%] | 5% | 10,199 [5%] |
Wheat | 5691 | 10,278 [6%] | 1411 [1%] | −86% | 3524 [−38%] |
Carrots | 4989 | 6086 [4%] | 2652 [2%] | −56% | 4430 [−11%] |
Corn | 3524 | 3047 [2%] | 1349 [1%] | −56% | 3451 [−2%] |
Potatoes | 2444 | 3973 [3%] | 3134 [2%] | −21% | 2009 [−18%] |
Crop Type | MK Statistic | p-Value | Theil–Sen Slope (ha-m/yr) 1 | Trend 2 |
---|---|---|---|---|
Alfalfa | −94 | 0.003 | −698 | − |
Almonds | 154 | 0.000 | 3035 | + |
Carrots | −58 | 0.064 | −81 | # |
Corn | −48 | 0.127 | −65 | # |
Cotton | −160 | 0.000 | −2107 | − |
Grapes | 124 | 0.000 | 410 | + |
Oranges | 68 | 0.030 | 115 | + |
Pistachios | 162 | 0.000 | 744 | + |
Potatoes | −88 | 0.005 | −82 | − |
Wheat | −100 | 0.001 | −352 | − |
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Schauer, M.; Senay, G.B. Characterizing Crop Water Use Dynamics in the Central Valley of California Using Landsat-Derived Evapotranspiration. Remote Sens. 2019, 11, 1782. https://doi.org/10.3390/rs11151782
Schauer M, Senay GB. Characterizing Crop Water Use Dynamics in the Central Valley of California Using Landsat-Derived Evapotranspiration. Remote Sensing. 2019; 11(15):1782. https://doi.org/10.3390/rs11151782
Chicago/Turabian StyleSchauer, Matthew, and Gabriel B. Senay. 2019. "Characterizing Crop Water Use Dynamics in the Central Valley of California Using Landsat-Derived Evapotranspiration" Remote Sensing 11, no. 15: 1782. https://doi.org/10.3390/rs11151782
APA StyleSchauer, M., & Senay, G. B. (2019). Characterizing Crop Water Use Dynamics in the Central Valley of California Using Landsat-Derived Evapotranspiration. Remote Sensing, 11(15), 1782. https://doi.org/10.3390/rs11151782