The above discussion concerns the direct measurement of a quantity, which incidentally occurs rarely. For example, the bathroom scale may convert a measured extension of a spring into an estimate of the measurand, the
mass of the person on the scale. The particular relationship between extension and mass is determined by the
calibration of the scale. A measurement
model converts a quantity value into the corresponding value of the measurand. There are many types of measurement in practice and therefore many models. A simple measurement model (for example for a scale, where the mass is proportional to the extension of the spring) might be sufficient for everyday domestic use. Alternatively, a more sophisticated model of a weighing, involving additional effects such as air
buoyancy, is capable of delivering better results for industrial or scientific purposes. In general there are often several different quantities, for example
temperature,
humidity and
displacement, that contribute to the definition of the measurand, and that need to be measured. Correction terms should be included in the measurement model when the conditions of measurement are not exactly as stipulated. These terms correspond to
systematic errors. Given an estimate of a correction term, the relevant quantity should be corrected by this estimate. There will be an uncertainty associated with the estimate, even if the estimate is zero, as is often the case. Instances of systematic errors arise in height measurement, when the alignment of the measuring instrument is not perfectly vertical, and the
ambient temperature is different from that prescribed. Neither the alignment of the instrument nor the ambient temperature is specified exactly, but information concerning these effects is available, for example the lack of alignment is at most 0.001° and the ambient temperature at the time of measurement differs from that stipulated by at most 2 °C. As well as raw data representing measured values, there is another form of data that is frequently needed in a measurement model. Some such data relate to quantities representing
physical constants, each of which is known imperfectly. Examples are material constants such as
modulus of elasticity and
specific heat. There are often other relevant data given in reference books, calibration certificates, etc., regarded as estimates of further quantities. The items required by a measurement model to define a measurand are known as input quantities in a measurement model. The model is often referred to as a functional relationship. The output quantity in a measurement model is the measurand. Formally, the output quantity, denoted by Y, about which information is required, is often related to input quantities, denoted by X_1,\ldots,X_N, about which information is available, by a measurement model in the form of :Y = f(X_1,\ldots,X_N), where f is known as the measurement function. A general expression for a measurement model is :h(Y, X_1,\ldots,X_N) = 0. It is taken that a procedure exists for calculating Y given X_1,\ldots,X_N, and that Y is uniquely defined by this equation. ==Propagation of distributions==