除了上述本研究的預設目標之外,本研究亦對MATLAB 和 EnergyPlus 之間的 聯合運作進行了實踐,得到了一套切實可行的MATLAB 修改 idf 模型文件的方法,
並且對解決EnergyPlus 通過 MATLAB 並行運算時可能發生的錯誤提出了相關建議 與方案。
物控制領域的可行性和價值性,對其推廣和實踐大有裨益。
6.2 建議
以5.2 節的討論作為基礎,本研究在以下方面可以繼續深入探討研究:
1. 預測天氣數據與實際天氣數據誤差對預測控制策略的影響,如何降低由於誤差 造成的預測控制策略不確定性。
2. 人員及其人員從事的活動是建築內部得熱的重要來源之一,人員流動預測對於 完善空調能耗預測模擬與預測控制是必要的,開發一套能夠預測人員流動與活 動狀態之系統是極有價值的。
3. 作為一套自動化的系統。可對程式做更為智慧化的編程以提高程式應對突發狀 況、極端惡劣天氣或是減少人為調整程式和參數的情形。
4. 在系統中加入更多與人體舒適度相關的參數,提高系統保障室內人員舒適的能 力。
5. 調整與完善控制策略的設定滿足更多最佳化需求,使得控制策略更貼合實際情 況,同時令策略更為靈活和有效。
6. 建立準確可靠的模型是模型預測控制的重要基礎。如何建立與調整參數使得模 型能夠反映真實情況下的建築物,這是個極其重要和有意義的研究課題。
7. 通過改良或簡化模型來提高系統運行的速度。在保證最佳化效果的前提下盡可 能減少程式運行的時間,以便實現真正的實時預測模擬與預測控制。
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