Regulating safety and health in a workplace is crucial for any industry. It makes measuring a level of risk to characterize
hazards in a workplace is a necessary. A systematic risk assessment in a workplace is capable to evaluate the level of risk
which might occur. The assessment of risk in workplace regularly is performed by several identified attributes. At present,
quantitative risk assessment uses crisp value in its evaluation. However, risk assessment process is exposed to uncertain
information, due to human evaluation which uses linguistic value and is difficult to translate into precise numerical value. It
makes the risk assessment process in workplace is imprecise. Thus, a robust fuzzy regression is introduced in this paper to
determine the fuzzy weights of assessment attribute and build a robust fuzzy assessment model. This is important to identify
the relationship among attributes, and helps the examiners to conduct a proper assessment in uncertain environment. A
triangular fuzzy number is used to present the fuzzy judgment. An explanatory example is included to show the working
procedure. The result indicates that the proposed model is beneficial to facilitate the decision model in evaluating risk, and
specify excellent choice under the presence of uncertainty.