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Recommendations for future work

BUS 5 LOAD PROFILE vs Voltage p.u

5.2 Recommendations for future work

This conclusion summarized the above discussed element forming a general approach to solve the utilisation factor problem. All the possibility types of the constraints and objectives are related to the location and size of photovoltaic.

 Appropriate guideline and regulations: the establishment of photovoltaic system need to solve penetration in power system. The constitution shall be approached for the technical standards and load forecast. In addition, the parties interest is considered to be formulated the relevant regulation for future investment purpose.

 Technologies research: The modern of power system has been introduced that a nontraditional of power flow may change power flow. The research and development of modern power network system shall pay attention of corresponding requirements such as protection, control and instrumentation system. The future of research and development shall be established:

o Advancement of mirco-grid power and intelligent of islanding mode o o Power quality and reliability of power network system

o Improve power factor and maintain utilization factor in safe zone in case of contingency

o Advancement to accommodate the uncertainty of net load and net ramping load. Example: A high capacity of DC battery.

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APPENDICES

APPENDIX A: Table of Generators and Photovoltaic System Profile

APPENDIX B: List of Equation

Real Power P = I2R Watts, (W)

Reactive Power Q = I2X Volt-amperes Reactive, (VAr) Apparent Power S = I2Z Volt-amperes, (VA)

P = Vrms x Irms x Cos Φ Power factor = Cos (Φ) Q = Vrms x Irms x Sin Φ Power factor = Cos (Φ) S2 = P2 + Q2

S = Vrms x Irms

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