AF promotes the progression of Heart failure and preserves Ejection Fraction(HFpEF), so reducing the risk of atrial fibrillation(AF) in HFpEF can significantly improve the prognosis of patients. However, there is lack of research on predictive models of AF in HFpEF. This study aims to build a risk model to predict the risk of AF in HFpEF patients, to guide early intervention of risk factors and reduce the risk of AF. Our study collected and analyzed retrospectively for 259 subjects diagnosed with HFpEF at Renmin Hospital of Wuhan University. Objectives were divided into 2 groups: group Ⅰ: HFpEF with no-AF (n = 128); Group Ⅱ: with AF (n = 131) for the baseline feature analysis. Models were constructed by logistic regression; a nomogram was visualized, and internal validation by bootstrapping, DCA curve was applied the evaluation new model. Compared with non-AF patients, those have older age, faster heart rate, metabolic, disorder, and myocardial. Based on logistic regression forward stepping method analysis, [hyperuricemia (HU)](p < 0.001), [left atrium diameter (LAD)](p = 0.039), [right atrium diameter (RAD)](p < 0.001), [triglyceride(TG)](p = 0.003), [age(> 65years)](p = 0.006), [heart rate(HR)](p = 0.007) were independently predictors of HFpEF with AF. Those were included in this model [area under the curve (AUC) = 0.873] and mean absolute error is 0.01, the threshold probability was within about 0.14 and 0.97 in decision curve analysis (DCA) curve, clinical application by Nomogram provided a greater net benefit. HFpEF patients had AF, older age, RAD, LAD, TG, heart rate and HU are significantly associated with it. The proposed model based on clinical features accurately predicts it and has a good application.