Investigating the Effects ofMonetary Shocks on thePerformance of Iran's Macroeconomics Despite the Presence of Cryptocurrency: a Stochastic Dynamic Equilibrium Approachdd

Authors
1 kharazmi University
2 Shiraz university
3 Persian Gulf University
Abstract
Market economies rely on the payment system to facilitate trade and exchange between businesses and consumers in the product market. "Payment" is the transfer of monetary value. The ability to control monetary policy instruments is one of the challenges of monetary policy in Iran. The reduction of the central bank's control over the money supply and the implementation of monetary policy is due to the change that occurs in the monetary base and the monetary multiplier. The structure of stochastic dynamic general equilibrium models, like other general equilibrium models, aims to describe the behavior of the entire economy and use decision interaction analysis. Wisdom is built on different levels.Due to the existence of sanctions and the lack of clear and correct information on the amount of sales of crude oil and other export items and petroleum products and unnecessary complications in doing the economics paper, it is considered closed, but if the correct information in can be considered as the expansion of the economy.The findings of this section indicate that the central bank's reaction to the growth rate of the total index of the real sector of the economy against the reaction to the deviation of the total index from its long-term equilibrium level can be more effective in reducing the real effects of the shocks of the real sector of the economy on macroeconomic variables. . Because the central bank controls the status of asset returns in other parallel markets such as currency, price levels, deposits and loans, and therefore the reaction to the emotional dynamics of the market return against the reaction to the market index level further guarantees macroeconomic stability.
Keywords

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