Matthew M. Conley
Agricultural Research Service
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Publication
Featured researches published by Matthew M. Conley.
Theoretical and Applied Climatology | 2012
Bruce A. Kimball; Matthew M. Conley; Keith F. Lewin
To study the likely effects of global warming on open-field vegetation, hexagonal arrays of infrared heaters are currently being used for low-stature (<1xa0m) plants in small (≤3xa0m) plots. To address larger ecosystem scales, herein we show that excellent uniformity of the warming can be achieved using nested hexagonal and rectangular arrays. Energy costs depend on the overall efficiency (useable infrared energy on the plot per electrical energy in), which varies with the radiometric efficiency (infrared radiation out per electrical energy in) of the individual heaters and with the geometric efficiency (fraction of thermal radiation that falls on useable plot area) associated with the arrangement of the heaters in an array. Overall efficiency would be about 26% at 4xa0mu2009s−1 wind speed for a single hexagonal array over a 3-m-diameter plot and 67% for a 199-hexagon honeycomb array over a 100-m-diameter plot, thereby resulting in an economy of scale.
Frontiers in Plant Science | 2018
Alison L. Thompson; Kelly R. Thorp; Matthew M. Conley; Pedro Andrade-Sanchez; John T. Heun; John M. Dyer; Jeffery W. White
Field-based high-throughput phenotyping is an emerging approach to quantify difficult, time-sensitive plant traits in relevant growing conditions. Proximal sensing carts represent an alternative platform to more costly high-clearance tractors for phenotyping dynamic traits in the field. A proximal sensing cart and specifically a deployment protocol, were developed to phenotype traits related to drought tolerance in the field. The cart-sensor package included an infrared thermometer, ultrasonic transducer, multi-spectral reflectance sensor, weather station, and RGB cameras. The cart deployment protocol was evaluated on 35 upland cotton (Gossypium hirsutum L.) entries grown in 2017 at Maricopa, AZ, United States. Experimental plots were grown under well-watered and water-limited conditions using a (0,1) alpha lattice design and evaluated in June and July. Total collection time of the 0.87 hectare field averaged 2 h and 27 min and produced 50.7 MB and 45.7 GB of data from the sensors and RGB cameras, respectively. Canopy temperature, crop water stress index (CWSI), canopy height, normalized difference vegetative index (NDVI), and leaf area index (LAI) differed among entries and showed an interaction with the water regime (p < 0.05). Broad-sense heritability (H2) estimates ranged from 0.097 to 0.574 across all phenotypes and collections. Canopy cover estimated from RGB images increased with counts of established plants (r = 0.747, p = 0.033). Based on the cart-derived phenotypes, three entries were found to have improved drought-adaptive traits compared to a local adapted cultivar. These results indicate that the deployment protocol developed for the cart and sensor package can measure multiple traits rapidly and accurately to characterize complex plant traits under drought conditions.
Frontiers in Plant Science | 2017
Duke Pauli; Jeffrey W. White; Pedro Andrade-Sanchez; Matthew M. Conley; John T. Heun; Kelly R. Thorp; Andrew N. French; Douglas J. Hunsaker; Elizabete Carmo-Silva; Guangyao Wang; Michael A. Gore
Many systems for field-based, high-throughput phenotyping (FB-HTP) quantify and characterize the reflected radiation from the crop canopy to derive phenotypes, as well as infer plant function and health status. However, given the technologys nascent status, it remains unknown how biophysical and physiological properties of the plant canopy impact downstream interpretation and application of canopy reflectance data. In that light, we assessed relationships between leaf thickness and several canopy-associated traits, including normalized difference vegetation index (NDVI), which was collected via active reflectance sensors carried on a mobile FB-HTP system, carbon isotope discrimination (CID), and chlorophyll content. To investigate the relationships among traits, two distinct cotton populations, an upland (Gossypium hirsutum L.) recombinant inbred line (RIL) population of 95 lines and a Pima (G. barbadense L.) population composed of 25 diverse cultivars, were evaluated under contrasting irrigation regimes, water-limited (WL) and well-watered (WW) conditions, across 3 years. We detected four quantitative trait loci (QTL) and significant variation in both populations for leaf thickness among genotypes as well as high estimates of broad-sense heritability (on average, above 0.7 for both populations), indicating a strong genetic basis for leaf thickness. Strong phenotypic correlations (maximum r = −0.73) were observed between leaf thickness and NDVI in the Pima population, but not the RIL population. Additionally, estimated genotypic correlations within the RIL population for leaf thickness with CID, chlorophyll content, and nitrogen discrimination (r^gij = −0.32, 0.48, and 0.40, respectively) were all significant under WW but not WL conditions. Economically important fiber quality traits did not exhibit significant phenotypic or genotypic correlations with canopy traits. Overall, our results support considering variation in leaf thickness as a potential contributing factor to variation in NDVI or other canopy traits measured via proximal sensing, and as a trait that impacts fundamental physiological responses of plants.
Field Crops Research | 2012
Jeffrey W. White; Pedro Andrade-Sanchez; Michael A. Gore; Kevin F. Bronson; Terry A. Coffelt; Matthew M. Conley; Kenneth A. Feldmann; Andrew N. French; John T. Heun; Douglas J. Hunsaker; Matthew A. Jenks; Bruce A. Kimball; Robert L. Roth; Robert Strand; Kelly R. Thorp; Gerard W. Wall; Guangyao Wang
Global Change Biology | 2007
Bruce A. Kimball; Matthew M. Conley; Shiping Wang; Xingwu Lin; Caiyun Luo; Jack A. Morgan; David J. Smith
New Phytologist | 2001
Matthew M. Conley; Bruce A. Kimball; T. J. Brooks; Paul J. Pinter; D.J. Hunsaker; G. W. Wall; Neal R. Adam; Robert L. LaMorte; A. D. Matthias; T. L. Thompson; S. W. Leavitt; M. J. Ottman; A. B. Cousins; J. M. Triggs
Agricultural and Forest Meteorology | 2004
J. M. Triggs; Bruce A. Kimball; Paul J. Pinter; G. W. Wall; Matthew M. Conley; T. J. Brooks; Robert L. LaMorte; Neal R. Adam; Michael J. Ottman; Allan D. Matthias; Steven W. Leavitt; Randall S. Cerveny
Agronomy Journal | 2011
R. F. Grant; Bruce A. Kimball; Matthew M. Conley; Jeffrey W. White; G. W. Wall; Michael J. Ottman
Crop Science | 2013
Jeffrey W. White; Matthew M. Conley
Agricultural and Forest Meteorology | 2009
Bruce A. Kimball; Matthew M. Conley