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Featured researches published by Isaya Kisekka.


Kansas Agricultural Experiment Station Research Reports | 2015

Irrigation Scheduling Based on Soil Moisture Sensors and Evapotranspiration

Jonathan Aguilar; D. Rogers; Isaya Kisekka

Irrigation scheduling is crucial to effectively manage water resources and optimize profitability of an irrigated operation. Tools that can be customized to a field’s characteristics can greatly facilitate irrigation scheduling decisions. Soil moisture sensors and the evapotranspiration (ET)-based KanSched are two of the tools that could be implemented in an irrigated farm. Focusing on the installation of soil moisture sensors, demonstration set-ups were established at the Southwest Research-Extension Center plots in Garden City, Kansas, and in a producer’s field, each with three types of moisture sensors at different depths. Among others, this project validates the importance of moisture sensors being installed as early as possible in a representative location with good soil-sensor contact. The moisture sensors, at the least, help in determining when irrigation water should be applied or scheduled. Furthermore, in implementing an irrigation schedule, the irrigation manager considers the irrigation system capacity, the amount that can be efficiently applied, the soil intake rate, and other relevant factors.


Journal of Irrigation and Drainage Engineering-asce | 2017

Evaluating optimum limited irrigation management strategies for corn production in the ogallala aquifer region

A. Araya; Isaya Kisekka; Pv Vara Prasad; Prasanna H. Gowda

AbstractWater is the major factor limiting crop production in the Ogallala Aquifer Region of the U.S. Central High Plains. Seasonal precipitation is highly variable, low in amount, and not enough t...


Kansas Agricultural Experiment Station Research Reports | 2016

Sorghum Yield Response to Water Supply and Irrigation Management

Isaya Kisekka; Freddie R. Lamm; Alan J. Schlegel

Grain sorghum yield, under full and limited irrigation, was evaluated at three locations in western Kansas (Colby, Tribune, and Garden City). The top-end yield under full irrigation was 190 bu/a. However, there were no significant differences among irrigation treatments at all the three locations due to the above normal rainfall received during the 2015 growing season. These preliminary results indicate that there is potential to improve grain sorghum yields under limited irrigation. Additionally, best management practices to maximize kernels per head could have the greatest effect on grain yields.


Kansas Agricultural Experiment Station Research Reports | 2015

Response of Drought Tolerant and Conventional Corn to Limited Irrigation

Isaya Kisekka; Freddie R. Lamm; Johnathon D. Holman

Summary With declining water levels in the Ogallala aquifer, many wells cannot supply peak irrigation water needs for corn. Emerging drought-tolerant (DT) corn hybrids could help farmers maintain yield with limited capacity wells. A knowledge gap exists com-paring transgenic DT and conventional corn hybrids in yield response to water level. The purpose of this study was to compare yield, yield components, water productivity, and irrigation water use efficiency response of DT corn with cspB (DKC 6267 DGVT-2PRO) transgene trait and conventional corn hybrid (DKC 62-98 VT2PRO) with similar maturity to full and limited irrigation. Preliminary results from the 2014 grow-ing season indicate the effect of irrigation level on corn yield was significant ( P-val-ue<0.001) . The effect of the cspB transgene trait in the DT hybrid did not affect yield ( P-value=0.32) , and there was no effect of the interaction between irrigation level and corn hybrid on yield ( P-value=0.82) . The effect of irrigation and hybrid on 100 kernel weight was significant, with


Kansas Agricultural Experiment Station Research Reports | 2016

Mobile Drip Irrigation Evaluation in Corn

Isaya Kisekka; T. Oker; G. Nguyen; Jonathan Aguilar; D. Rogers

Mobile Drip Irrigation (MDI) involves attaching driplines to center pivot drops. MDI has potential to eliminate water losses due to spray droplet evaporation, water evaporation from the canopy, and wind drift. MDI also may reduce soil water evaporation due to limited surface wetting. A study was conducted with the following objectives: 1) compare soil water evaporation under MDI and in-canopy spray nozzles; 2) evaluate soil water redistribution under MDI at 60 inch dripline lateral spacing; 3) compare corn grain yield, water productivity, and irrigation water use efficiency; and 4) compare end-of-season profile soil water under MDI and in-canopy spray at two well capacities 300 and 600 gpm. The experiment was conducted at the Kansas State University Southwest Research-Extension Center near Garden City, Kansas. The experimental design was randomized complete block with four replications, and two treatments MDI and in-canopy spray nozzles. Soil water evaporation was measured using four-inch minilysimeters placed between corn rows. The effect of a 60-inch lateral spacing on soil water redistribution was evaluated using soil water measurements made using neutron attenuation to a depth of 8 feet. Preliminary results indicate soil water evaporation was lower under MDI compared to in-canopy spray nozzles, by 35% on average. Soil water redistribution was adequate for dripline spacing of 60 inches in silt loam soils of southwest Kansas. At 600 gpm well capacity, corn yields were 247 and 255 bu/a for MDI and in-canopy spray nozzles, respectively. At 300 gpm well capacity, yields were 243 and 220 bu/a for MDI and in-canopy spray nozzles, respectively. However, the differences were not significant (p > 0.05) between the irrigation application technologies in 2015. The effect of application method on water productivity and irrigation water use efficiency was also not significant. The lack of significant differences could be attributed to the above normal rainfall received during the 2015 growing season (18.3 inches from May to October). Normal mean annual rainfall for the study area is 18 inches. The effect of application method on end-of-season soil water was statistically significant under low well capacity (300 gpm) with Mobile Drip Irrigation having more soil water compared to in-canopy spray nozzles in the 8 foot profile at harvest. It is worth noting that plots under MDI did not have deep wheel tracks associated with sprinkler nozzles.


Kansas Agricultural Experiment Station Research Reports | 2016

Forage Sorghum and Corn Silage Response to Full and Deficit Irrigation

Isaya Kisekka; J. D. Holman; J. W. Waggoner; Jonathan Aguilar; R. Currie

There is limited information on forage sorghum and corn silage yield response to full and deficit irrigation in Kansas. The objective of this study was to generate information on forage sorghum (brown mid-rib hybrids (BMR and non-BMR)) and corn silage yield response to different levels of irrigation as influenced by irrigation capacity in southwest Kansas. Preliminary results indicate the effect of irrigation capacity on forage yield was significant (P = 0.0009) in 2014 but not 2015, probably due to high growing season rainfall received in 2015. Corn silage produced significantly (p < 0.05) higher biomass at all irrigation capacities compared to forage sorghum hybrids in 2015. BMR forage sorghum produced significantly lower biomass compared to non-BMR hybrid in both 2014 and 2015 (P < 0.05). The highest amounts of forage produced for corn silage, BMR, and non-BMR forage sorghum were 24.6, 17.4, and 21.1 tons/a adjusted to 65%, moisture respectively. Water productivity ranged from 1.0 to 1.4 dry matter tons/a/in. More research is needed under normal and dry years to quantify forage sorghum and corn silage yield and forage quality response to full and deficit irrigation.


5th National Decennial Irrigation Conference Proceedings, 5-8 December 2010, Phoenix Convention Center, Phoenix, Arizona USA | 2010

Evaluation and Calibration of Radiation-Based Equations for Estimating Potential Evapotranspiration under Florida’s Humid Subtropical Climate

Isaya Kisekka; Kati W. Migliaccio; Michael D. Dukes

In situations of limited meteorological data, radiation-based potential evapotranspiration (ETp) equations could be used in irrigation scheduling and hydrology due to their minimum data requirements and ease of computation. However, their utilization is limited due to variability in their accuracy and absence of accurate solar radiation data. The objectives of this study were to: 1) select and calibrate radiation-based equations for estimating ETp under Florida’s humid subtropical climate and 2) evaluate performance of the calibrated radiation-based equations when applied with Geostationary Operational Environmental Satellite (GOES) derived solar radiation as an alternative to ground-based measurements.


Agricultural and Forest Meteorology | 2015

Assessment of maize growth and yield using crop models under present and future climate in southwestern Ethiopia

A. Araya; Gerrit Hoogenboom; Eike Luedeling; Kiros Meles Hadgu; Isaya Kisekka; Lucieta Guerreiro Martorano


Transactions of the ASABE | 2015

Hydrologic and Water Quality Models: Sensitivity

Yongping Yuan; Yogesh P. Khare; Xiuying Wang; Prem B. Parajuli; Isaya Kisekka; Stefan Finsterle


Transactions of the ASABE | 2013

Sensitivity Analysis and Parameter Estimation for an Approximate Analytical Model of Canal-Aquifer Interaction Applied in the C-111 Basin

Isaya Kisekka; Kati W. Migliaccio; Rafeal Muñoz-Carpena; Yogesh P. Khare; Treavor H. Boyer

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A. Araya

Kansas State University

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Prasanna H. Gowda

Agricultural Research Service

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