calcATHB calculates predicted thermal sensation based on the adaptive thermal heat balance approach
using Gagge's 2 Node Model
calcATHBpts(trm, psych, ta, tr, vel, rh, met, wme, pb, ltime, ht, wt)- Running mean outdoor temperature in [degree C]
- factor related to fixed effect on perceived control
- a numeric value presenting air temperature in [degree C]
- a numeric value presenting mean radiant temperature in [degree C]
- a numeric value presenting air velocity in [m/s]
- a numeric value presenting relative humidity [%]
- a numeric value presenting metabolic rate in [met]
- a numeric value presenting external work in [met]
- a numeric value presenting barometric pressure in [torr] or [mmHg]
- a numeric value presenting exposure time in [minutes]
- a numeric value presenting body height in [cm]
- a numeric value presenting body weight in [kg]
calcATHBpts returns the predicted thermal sensation adapted through the ATHB approach
All variables must have the same length 1. For the calculation of several values use function calcComfInd.
Schweiker & Wagner (2015) <doi:10.1016/j.buildenv.2015.08.018> Schweiker & Wagner (2016) Exploring potentials and limitations of the adaptive thermal heat balance framework Proceedings of 9th Windsor Conference: making comfort relevant Cumberland Lodge, Windsor, UK, 2016
see also calcComfInd, link{calcATHBpmv}, link{calcATHBset}
# NOT RUN {
calcATHBpts(20, 0, 25, 25, .1, 50, 1.1, 0, 760, 60, 171, 70)
# }
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