J. Environ. Qual.
Soil preparation for agricultural crops produces aerosols that may significantly contribute to seasonal atmospheric particulate matter (PM). Efforts to reduce PM emissions from tillage through a variety of conservation management practices (CMPs) have been made, but the reductions from many of these practices have not been measured in the field. A study was conducted in California’s San Joaquin Valley to quantify emissions reductions from fall tillage CMP. Emissions were measured from conventional tillage methods and from a “combined operations” CMP, which combines several implements to reduce tractor passes. Measurements were made of soil moisture, bulk density, meteorological profiles, filter-based total suspended PM (TSP), concentrations of PM with an equivalent aerodynamic diameter ≤10 mm (PM10) and PM with an equivalent aerodynamic diameter ≤2.5 mm (PM2.5), and aerosol size distribution. A mass-calibrated, scanning, three-wavelength light detection and ranging (LIDAR) procedure estimated PM through a series of algorithms. Emissions were calculated via inverse modeling with mass concentration measurements and applying a mass balance to LIDAR data. Inverse modeling emission estimates were higher, often with statistically significant differences. Derived PM10 emissions for conventional operations generally agree with literature values. Sampling irregularities with a few filter-based samples prevented calculation of a complete set of emissions through inverse modeling; however, the LIDAR-based emissions dataset was complete. The CMP control effectiveness was calculated based on LIDAR-derived emissions to be 29 ± 2%, 60 ± 1%, and 25 ± 1% for PM2.5, PM10, and TSP size fractions, respectively. Implementation of this CMP provides an effective method for the reduction of PM emissions.
Moore, Kori D.; Wojcik, Michael D.; Martin, Randal S.; Marchant, Christian C.; Bingham, Gail E.; Pfeiffer, Richard L.; Prueger, John Hi.; and Hatfield, Jerry L., "Particulate Emissions Calculations from Fall Tillage Operations Using Point and Remote Sensors" (2013). Space Dynamics Lab Publications. Paper 94.