| import numpy as np |
| import pandas as pd |
|
|
| from queries.process_gsm import combined_gsm_database |
| from utils.check_sheet_exist import execute_checks_sheets_exist |
| from utils.convert_to_excel import convert_dfs, save_dataframe |
| from utils.kpi_analysis_utils import ( |
| GsmAnalysis, |
| GsmCapacity, |
| analyze_sdcch_call_blocking, |
| analyze_tch_abis_fails, |
| analyze_tch_call_blocking, |
| cell_availability_analysis, |
| combine_comments, |
| create_daily_date, |
| create_dfs_per_kpi, |
| create_hourly_date, |
| kpi_naming_cleaning, |
| ) |
| from utils.utils_functions import calculate_distances |
|
|
| GSM_ANALYSIS_COLUMNS = [ |
| "ID_BTS", |
| "site_name", |
| "name", |
| "BSC", |
| "BCF", |
| "BTS", |
| "code", |
| "Region", |
| "adminState", |
| "frequencyBandInUse", |
| "cellId", |
| "band", |
| "site_config_band", |
| "trxRfPower", |
| "BCCH", |
| "Longitude", |
| "Latitude", |
| "TRX_TCH", |
| "MAL_TCH", |
| "amrSegLoadDepTchRateLower", |
| "amrSegLoadDepTchRateUpper", |
| "btsSpLoadDepTchRateLower", |
| "btsSpLoadDepTchRateUpper", |
| "amrWbFrCodecModeSet", |
| "dedicatedGPRScapacity", |
| "defaultGPRScapacity", |
| "number_trx_per_cell", |
| "number_trx_per_bcf", |
| "number_tch_per_cell", |
| "number_sd_per_cell", |
| "number_bcch_per_cell", |
| "number_ccch_per_cell", |
| "number_cbc_per_cell", |
| "number_total_channels_per_cell", |
| "number_signals_per_cell", |
| "hf_rate_coef", |
| "GPRS", |
| "TCH Actual HR%", |
| "Offered Traffic BH", |
| "Max_Traffic BH", |
| "Avg_Traffic BH", |
| "TCH UTILIZATION (@Max Traffic)", |
| "Tch utilization comments", |
| "ErlabngB_value", |
| "Target FR CHs", |
| "Target HR CHs", |
| "Target TCHs", |
| "Target TRXs", |
| "Number of required TRXs", |
| "max_tch_call_blocking_bh", |
| "avg_tch_call_blocking_bh", |
| "number_of_days_with_tch_blocking_exceeded_bh", |
| "tch_call_blocking_bh_comment", |
| "max_sdcch_real_blocking_bh", |
| "avg_sdcch_real_blocking_bh", |
| "number_of_days_with_sdcch_blocking_exceeded_bh", |
| "sdcch_real_blocking_bh_comment", |
| "Average_cell_availability_bh", |
| "number_of_days_exceeding_availability_threshold_bh", |
| "availability_comment_bh", |
| "max_tch_abis_fail_bh", |
| "avg_tch_abis_fail_bh", |
| "number_of_days_with_tch_abis_fail_exceeded_bh", |
| "tch_abis_fail_bh_comment", |
| "Average_cell_availability_daily", |
| "number_of_days_exceeding_availability_threshold_daily", |
| "availability_comment_daily", |
| "max_tch_abis_fail_daily", |
| "avg_tch_abis_fail_daily", |
| "number_of_days_with_tch_abis_fail_exceeded_daily", |
| "tch_abis_fail_daily_comment", |
| "BH Congestion status", |
| "operational_comment", |
| "Final comment", |
| "Final comment summary", |
| ] |
|
|
| OPERATIONAL_NEIGHBOURS_COLUMNS = [ |
| "ID_BTS", |
| "name", |
| "operational_comment", |
| "BH Congestion status", |
| "Longitude", |
| "Latitude", |
| ] |
|
|
| GSM_COLUMNS = [ |
| "ID_BTS", |
| "site_name", |
| "name", |
| "BSC", |
| "BCF", |
| "BTS", |
| "code", |
| "Region", |
| "adminState", |
| "frequencyBandInUse", |
| "amrSegLoadDepTchRateLower", |
| "amrSegLoadDepTchRateUpper", |
| "btsSpLoadDepTchRateLower", |
| "btsSpLoadDepTchRateUpper", |
| "amrWbFrCodecModeSet", |
| "dedicatedGPRScapacity", |
| "defaultGPRScapacity", |
| "cellId", |
| "band", |
| "site_config_band", |
| "trxRfPower", |
| "BCCH", |
| "number_trx_per_cell", |
| "number_trx_per_bcf", |
| "TRX_TCH", |
| "MAL_TCH", |
| "Longitude", |
| "Latitude", |
| ] |
|
|
| TRX_COLUMNS = [ |
| "ID_BTS", |
| "number_tch_per_cell", |
| "number_sd_per_cell", |
| "number_bcch_per_cell", |
| "number_ccch_per_cell", |
| "number_cbc_per_cell", |
| "number_total_channels_per_cell", |
| "number_signals_per_cell", |
| ] |
|
|
| KPI_COLUMNS = [ |
| "date", |
| "BTS_name", |
| "TCH_availability_ratio", |
| "2G_Carried_Traffic", |
| "TCH_call_blocking", |
| "TCH_ABIS_FAIL_CALL_c001084", |
| "SDCCH_real_blocking", |
| ] |
| BH_COLUMNS_FOR_CAPACITY = [ |
| "Max_Traffic BH", |
| "Avg_Traffic BH", |
| "max_tch_call_blocking_bh", |
| "avg_tch_call_blocking_bh", |
| "number_of_days_with_tch_blocking_exceeded_bh", |
| "tch_call_blocking_bh_comment", |
| "max_sdcch_real_blocking_bh", |
| "avg_sdcch_real_blocking_bh", |
| "number_of_days_with_sdcch_blocking_exceeded_bh", |
| "sdcch_real_blocking_bh_comment", |
| "Average_cell_availability_bh", |
| "number_of_days_exceeding_availability_threshold_bh", |
| "availability_comment_bh", |
| "max_tch_abis_fail_bh", |
| "avg_tch_abis_fail_bh", |
| "number_of_days_with_tch_abis_fail_exceeded_bh", |
| "tch_abis_fail_bh_comment", |
| ] |
|
|
| DAILY_COLUMNS_FOR_CAPACITY = [ |
| "Average_cell_availability_daily", |
| "number_of_days_exceeding_availability_threshold_daily", |
| "availability_comment_daily", |
| "max_tch_abis_fail_daily", |
| "avg_tch_abis_fail_daily", |
| "number_of_days_with_tch_abis_fail_exceeded_daily", |
| "tch_abis_fail_daily_comment", |
| ] |
|
|
|
|
| def bh_traffic_analysis( |
| df: pd.DataFrame, |
| number_of_kpi_days: int, |
| ) -> pd.DataFrame: |
|
|
| result_df = df.copy() |
| last_days_df: pd.DataFrame = result_df.iloc[:, -number_of_kpi_days:] |
| |
|
|
| result_df["Avg_Traffic BH"] = last_days_df.mean(axis=1).round(2) |
| result_df["Max_Traffic BH"] = last_days_df.max(axis=1) |
| return result_df |
|
|
|
|
| def bh_dfs_per_kpi( |
| df: pd.DataFrame, |
| number_of_kpi_days: int = 7, |
| tch_blocking_threshold: int = 0.50, |
| sdcch_blocking_threshold: int = 0.50, |
| number_of_threshold_days: int = 3, |
| tch_abis_fails_threshold: int = 10, |
| availability_threshold: int = 95, |
| ) -> pd.DataFrame: |
| """ |
| Create pivoted DataFrames for each KPI and perform analysis. |
| |
| Args: |
| df: DataFrame containing KPI data |
| number_of_kpi_days: Number of days to analyze |
| threshold: Utilization threshold percentage for flagging |
| number_of_threshold_days: Minimum days above threshold to flag for upgrade |
| |
| Returns: |
| DataFrame with combined analysis results |
| """ |
| pivoted_kpi_dfs = {} |
|
|
| pivoted_kpi_dfs = create_dfs_per_kpi( |
| df=df, |
| pivot_date_column="date", |
| pivot_name_column="BTS_name", |
| kpi_columns_from=2, |
| ) |
|
|
| tch_call_blocking_df: pd.DataFrame = pivoted_kpi_dfs["TCH_call_blocking"] |
| sdcch_real_blocking_df: pd.DataFrame = pivoted_kpi_dfs["SDCCH_real_blocking"] |
| Carried_Traffic_df: pd.DataFrame = pivoted_kpi_dfs["2G_Carried_Traffic"] |
| tch_availability_ratio_df: pd.DataFrame = pivoted_kpi_dfs["TCH_availability_ratio"] |
| tch_abis_fails_df: pd.DataFrame = pivoted_kpi_dfs["TCH_ABIS_FAIL_CALL_c001084"] |
|
|
| |
|
|
| tch_call_blocking_df = analyze_tch_call_blocking( |
| df=tch_call_blocking_df, |
| number_of_kpi_days=number_of_kpi_days, |
| number_of_threshold_days=number_of_threshold_days, |
| tch_blocking_threshold=tch_blocking_threshold, |
| analysis_type="BH", |
| ) |
|
|
| sdcch_real_blocking_df = analyze_sdcch_call_blocking( |
| df=sdcch_real_blocking_df, |
| number_of_kpi_days=number_of_kpi_days, |
| sdcch_blocking_threshold=sdcch_blocking_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| analysis_type="BH", |
| ) |
|
|
| Carried_Traffic_df = bh_traffic_analysis( |
| df=Carried_Traffic_df, |
| number_of_kpi_days=number_of_kpi_days, |
| ) |
|
|
| tch_abis_fails_df = analyze_tch_abis_fails( |
| df=tch_abis_fails_df, |
| number_of_kpi_days=number_of_kpi_days, |
| tch_abis_fails_threshold=tch_abis_fails_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| analysis_type="BH", |
| ) |
| tch_availability_ratio_df = cell_availability_analysis( |
| df=tch_availability_ratio_df, |
| days=number_of_kpi_days, |
| availability_threshold=availability_threshold, |
| analysis_type="BH", |
| ) |
|
|
| bh_kpi_df = pd.concat( |
| [ |
| Carried_Traffic_df, |
| tch_call_blocking_df, |
| sdcch_real_blocking_df, |
| tch_availability_ratio_df, |
| tch_abis_fails_df, |
| ], |
| axis=1, |
| ) |
| return bh_kpi_df |
|
|
|
|
| def analyse_bh_data( |
| bh_report_path: str, |
| number_of_kpi_days: int, |
| tch_blocking_threshold: int, |
| sdcch_blocking_threshold: int, |
| number_of_threshold_days: int, |
| tch_abis_fails_threshold: int, |
| availability_threshold: int, |
| ) -> pd.DataFrame: |
| df = pd.read_csv(bh_report_path, delimiter=";") |
| df = kpi_naming_cleaning(df) |
| df = create_hourly_date(df) |
| df = df[KPI_COLUMNS] |
| df = bh_dfs_per_kpi( |
| df=df, |
| number_of_kpi_days=number_of_kpi_days, |
| tch_blocking_threshold=tch_blocking_threshold, |
| sdcch_blocking_threshold=sdcch_blocking_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| tch_abis_fails_threshold=tch_abis_fails_threshold, |
| availability_threshold=availability_threshold, |
| ) |
|
|
| bh_df_for_capacity = df.copy() |
| bh_df_for_capacity = bh_df_for_capacity[BH_COLUMNS_FOR_CAPACITY] |
| bh_df_for_capacity = bh_df_for_capacity.reset_index() |
|
|
| |
| if isinstance(bh_df_for_capacity.columns, pd.MultiIndex): |
| bh_df_for_capacity.columns = [ |
| "_".join([str(el) for el in col if el]) |
| for col in bh_df_for_capacity.columns.values |
| ] |
| |
|
|
| |
| bh_df_for_capacity = bh_df_for_capacity.rename(columns={"BTS_name": "name"}) |
|
|
| return [bh_df_for_capacity, df] |
|
|
|
|
| def daily_dfs_per_kpi( |
| df: pd.DataFrame, |
| number_of_kpi_days: int = 7, |
| availability_threshold: int = 95, |
| number_of_threshold_days: int = 3, |
| tch_abis_fails_threshold: int = 10, |
| sdcch_blocking_threshold: int = 0.5, |
| tch_blocking_threshold: int = 0.5, |
| ) -> pd.DataFrame: |
| """ |
| Create pivoted DataFrames for each KPI and perform analysis. |
| |
| Args: |
| df: DataFrame containing KPI data |
| number_of_kpi_days: Number of days to analyze |
| threshold: Utilization threshold percentage for flagging |
| number_of_threshold_days: Minimum days above threshold to flag for upgrade |
| |
| Returns: |
| DataFrame with combined analysis results |
| """ |
| pivoted_kpi_dfs = {} |
|
|
| pivoted_kpi_dfs = create_dfs_per_kpi( |
| df=df, |
| pivot_date_column="date", |
| pivot_name_column="BTS_name", |
| kpi_columns_from=2, |
| ) |
|
|
| tch_call_blocking_df: pd.DataFrame = pivoted_kpi_dfs["TCH_call_blocking"] |
| sdcch_real_blocking_df: pd.DataFrame = pivoted_kpi_dfs["SDCCH_real_blocking"] |
| Carried_Traffic_df: pd.DataFrame = pivoted_kpi_dfs["2G_Carried_Traffic"] |
| tch_availability_ratio_df: pd.DataFrame = pivoted_kpi_dfs["TCH_availability_ratio"] |
| tch_abis_fails_df: pd.DataFrame = pivoted_kpi_dfs["TCH_ABIS_FAIL_CALL_c001084"] |
|
|
| tch_availability_ratio_df = cell_availability_analysis( |
| df=tch_availability_ratio_df, |
| days=number_of_kpi_days, |
| availability_threshold=availability_threshold, |
| ) |
| sdcch_real_blocking_df = analyze_sdcch_call_blocking( |
| df=sdcch_real_blocking_df, |
| number_of_kpi_days=number_of_kpi_days, |
| sdcch_blocking_threshold=sdcch_blocking_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| analysis_type="Daily", |
| ) |
| tch_call_blocking_df = analyze_tch_call_blocking( |
| df=tch_call_blocking_df, |
| number_of_kpi_days=number_of_kpi_days, |
| number_of_threshold_days=number_of_threshold_days, |
| tch_blocking_threshold=tch_blocking_threshold, |
| analysis_type="Daily", |
| ) |
| tch_abis_fails_df = analyze_tch_abis_fails( |
| df=tch_abis_fails_df, |
| number_of_kpi_days=number_of_kpi_days, |
| tch_abis_fails_threshold=tch_abis_fails_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| analysis_type="Daily", |
| ) |
|
|
| daily_kpi_df = pd.concat( |
| [ |
| tch_availability_ratio_df, |
| Carried_Traffic_df, |
| tch_call_blocking_df, |
| sdcch_real_blocking_df, |
| tch_abis_fails_df, |
| ], |
| axis=1, |
| ) |
|
|
| daily_kpi_df = combine_comments( |
| daily_kpi_df, |
| "availability_comment_daily", |
| "tch_abis_fail_daily_comment", |
| "sdcch_real_blocking_daily_comment", |
| new_column="sdcch_comments", |
| ) |
|
|
| daily_kpi_df = combine_comments( |
| daily_kpi_df, |
| "availability_comment_daily", |
| "tch_abis_fail_daily_comment", |
| "tch_call_blocking_daily_comment", |
| new_column="tch_comments", |
| ) |
| return daily_kpi_df |
|
|
|
|
| def analyse_daily_data( |
| daily_report_path: str, |
| number_of_kpi_days: int, |
| tch_abis_fails_threshold: int, |
| availability_threshold: int, |
| number_of_threshold_days: int, |
| sdcch_blocking_threshold: int, |
| tch_blocking_threshold: int, |
| ) -> pd.DataFrame: |
| df = pd.read_csv(daily_report_path, delimiter=";") |
| df = kpi_naming_cleaning(df) |
| df = create_daily_date(df) |
| df = df[KPI_COLUMNS] |
| df = daily_dfs_per_kpi( |
| df=df, |
| number_of_kpi_days=number_of_kpi_days, |
| availability_threshold=availability_threshold, |
| tch_abis_fails_threshold=tch_abis_fails_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| sdcch_blocking_threshold=sdcch_blocking_threshold, |
| tch_blocking_threshold=tch_blocking_threshold, |
| ) |
| daily_df_for_capacity = df.copy() |
| daily_df_for_capacity = daily_df_for_capacity[DAILY_COLUMNS_FOR_CAPACITY] |
| daily_df_for_capacity = daily_df_for_capacity.reset_index() |
|
|
| if isinstance(daily_df_for_capacity.columns, pd.MultiIndex): |
| daily_df_for_capacity.columns = [ |
| "_".join([str(el) for el in col if el]) |
| for col in daily_df_for_capacity.columns.values |
| ] |
| |
| daily_df_for_capacity = daily_df_for_capacity.rename(columns={"BTS_name": "name"}) |
|
|
| return daily_df_for_capacity, df |
|
|
|
|
| def get_gsm_databases(dump_path: str) -> pd.DataFrame: |
|
|
| dfs = combined_gsm_database(dump_path) |
| bts_df: pd.DataFrame = dfs[0] |
| trx_df: pd.DataFrame = dfs[2] |
|
|
| |
| bts_df = bts_df[GSM_COLUMNS] |
| trx_df = trx_df[TRX_COLUMNS] |
|
|
| |
| trx_df = trx_df.drop_duplicates(subset=["ID_BTS"]) |
|
|
| gsm_df = pd.merge(bts_df, trx_df, on="ID_BTS", how="left") |
|
|
| |
| gsm_df["hf_rate_coef"] = gsm_df["amrSegLoadDepTchRateLower"].map( |
| GsmAnalysis.hf_rate_coef |
| ) |
| |
| gsm_df["GPRS"] = ( |
| gsm_df["dedicatedGPRScapacity"] * gsm_df["number_tch_per_cell"] |
| ) / 100 |
|
|
| |
| gsm_df["TCH Actual HR%"] = gsm_df["number_tch_per_cell"] * gsm_df["hf_rate_coef"] |
|
|
| |
| gsm_df = gsm_df.dropna(subset=["TCH Actual HR%"]) |
|
|
| |
| gsm_df["Offered Traffic BH"] = gsm_df["TCH Actual HR%"].apply( |
| lambda x: GsmAnalysis.erlangB_table.get(int(x), 0) |
| ) |
|
|
| return gsm_df |
|
|
|
|
| def get_operational_neighbours(distance: int) -> pd.DataFrame: |
|
|
| operational_df: pd.DataFrame = GsmCapacity.operational_neighbours_df |
| operational_df = operational_df[ |
| ["ID_BTS", "name", "operational_comment", "Longitude", "Latitude"] |
| ] |
| |
| operational_df = operational_df[ |
| operational_df["operational_comment"] != "Operational is OK" |
| ] |
| operational_df = operational_df[ |
| operational_df[["Latitude", "Longitude"]].notna().all(axis=1) |
| ] |
|
|
| |
| operational_df = operational_df.add_prefix("Dataset2_") |
|
|
| congested_df: pd.DataFrame = GsmCapacity.operational_neighbours_df |
| congested_df = congested_df[ |
| ["ID_BTS", "name", "BH Congestion status", "Longitude", "Latitude"] |
| ] |
|
|
| |
| congested_df = congested_df[ |
| congested_df["BH Congestion status"].notna() |
| & congested_df["BH Congestion status"].astype(str).str.len().astype(bool) |
| ] |
| |
| congested_df = congested_df[congested_df["BH Congestion status"] != "nan, nan"] |
|
|
| |
| congested_df = congested_df[ |
| congested_df[["Latitude", "Longitude"]].notna().all(axis=1) |
| ] |
|
|
| |
| congested_df = congested_df.add_prefix("Dataset1_") |
|
|
| distances_dfs = calculate_distances( |
| congested_df, |
| operational_df, |
| "Dataset1_ID_BTS", |
| "Dataset1_Latitude", |
| "Dataset1_Longitude", |
| "Dataset2_ID_BTS", |
| "Dataset2_Latitude", |
| "Dataset2_Longitude", |
| ) |
| distances_df = distances_dfs[0] |
| df1 = distances_df[distances_df["Distance_km"] <= distance] |
|
|
| |
| df1 = df1.rename( |
| columns={ |
| "Dataset1_ID_BTS": "Source_ID_BTS", |
| "Dataset1_name": "Source_name", |
| "Dataset1_BH Congestion status": "Source_BH Congestion status", |
| "Dataset1_Longitude": "Source_Longitude", |
| "Dataset1_Latitude": "Source_Latitude", |
| "Dataset2_ID_BTS_Dataset2": "Neighbour_ID_BTS", |
| "Dataset2_name_Dataset2": "Neighbour_name", |
| "Dataset2_operational_comment_Dataset2": "Neighbour_operational_comment", |
| "Dataset2_Longitude_Dataset2": "Neighbour_Longitude", |
| "Dataset2_Latitude_Dataset2": "Neighbour_Latitude", |
| } |
| ) |
|
|
| |
| df1 = df1[df1["Source_name"] != df1["Neighbour_name"]] |
|
|
| |
| df1 = df1.reset_index(drop=True) |
| return df1 |
|
|
|
|
| def analyze_gsm_data( |
| dump_path: str, |
| daily_report_path: str, |
| bh_report_path: str, |
| number_of_kpi_days: int, |
| number_of_threshold_days: int, |
| availability_threshold: int, |
| tch_abis_fails_threshold: int, |
| sdcch_blocking_threshold: float, |
| tch_blocking_threshold: float, |
| max_traffic_threshold: int, |
| operational_neighbours_distance: int, |
| ): |
| GsmCapacity.operational_neighbours_df = None |
|
|
| daily_kpi_dfs: pd.DataFrame = analyse_daily_data( |
| daily_report_path=daily_report_path, |
| number_of_kpi_days=number_of_kpi_days, |
| availability_threshold=availability_threshold, |
| tch_abis_fails_threshold=tch_abis_fails_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| sdcch_blocking_threshold=sdcch_blocking_threshold, |
| tch_blocking_threshold=tch_blocking_threshold, |
| ) |
|
|
| gsm_database_df: pd.DataFrame = get_gsm_databases(dump_path) |
|
|
| bh_kpi_dfs = analyse_bh_data( |
| bh_report_path=bh_report_path, |
| number_of_kpi_days=number_of_kpi_days, |
| tch_blocking_threshold=tch_blocking_threshold, |
| sdcch_blocking_threshold=sdcch_blocking_threshold, |
| number_of_threshold_days=number_of_threshold_days, |
| tch_abis_fails_threshold=tch_abis_fails_threshold, |
| availability_threshold=availability_threshold, |
| ) |
|
|
| bh_kpi_df = bh_kpi_dfs[0] |
| bh_kpi_full_df = bh_kpi_dfs[1] |
|
|
| daily_kpi_df = daily_kpi_dfs[0] |
| daily_kpi_full_df = daily_kpi_dfs[1] |
|
|
| gsm_analysis_df = gsm_database_df.merge(bh_kpi_df, on="name", how="left") |
| gsm_analysis_df = gsm_analysis_df.merge(daily_kpi_df, on="name", how="left") |
|
|
| |
| gsm_analysis_df["TCH UTILIZATION (@Max Traffic)"] = ( |
| gsm_analysis_df["Max_Traffic BH"] / gsm_analysis_df["Offered Traffic BH"] |
| ) * 100 |
|
|
| |
| gsm_analysis_df["Tch utilization comments"] = np.where( |
| gsm_analysis_df["TCH UTILIZATION (@Max Traffic)"] > max_traffic_threshold, |
| "Tch utilization exceeded threshold", |
| None, |
| ) |
| |
| gsm_analysis_df = combine_comments( |
| gsm_analysis_df, |
| "Tch utilization comments", |
| "tch_call_blocking_bh_comment", |
| "sdcch_real_blocking_bh_comment", |
| new_column="BH Congestion status", |
| ) |
|
|
| |
| gsm_analysis_df["ErlabngB_value"] = gsm_analysis_df["Max_Traffic BH"] / ( |
| 1 - (gsm_analysis_df["max_tch_call_blocking_bh"] / 200) |
| ) |
|
|
| |
| gsm_analysis_df["Target FR CHs"] = gsm_analysis_df["ErlabngB_value"].apply( |
| lambda x: GsmAnalysis.erlangB_table.get(int(x) if pd.notnull(x) else 0, 0) |
| ) |
|
|
| |
| gsm_analysis_df["Target HR CHs"] = gsm_analysis_df["Target FR CHs"] * 2 |
|
|
| |
| gsm_analysis_df["Target TCHs"] = ( |
| gsm_analysis_df["Target HR CHs"] |
| + gsm_analysis_df["number_signals_per_cell"] |
| + gsm_analysis_df["GPRS"] |
| + gsm_analysis_df["number_sd_per_cell"] |
| ) |
| |
| gsm_analysis_df["Target TRXs"] = np.ceil( |
| gsm_analysis_df["Target TCHs"] / 8 |
| ) |
|
|
| |
| gsm_analysis_df["Number of required TRXs"] = ( |
| gsm_analysis_df["Target TRXs"] - gsm_analysis_df["number_trx_per_cell"] |
| ) |
|
|
| |
| |
| |
| |
| |
| gsm_analysis_df["operational_comment"] = np.select( |
| [ |
| gsm_analysis_df["availability_comment_daily"] == "Down Site", |
| (gsm_analysis_df["availability_comment_daily"] != "Availability OK") |
| & ( |
| gsm_analysis_df["tch_abis_fail_daily_comment"] |
| == "tch abis fail exceeded threshold" |
| ), |
| (gsm_analysis_df["availability_comment_daily"] != "Availability OK") |
| & pd.isna(gsm_analysis_df["tch_abis_fail_daily_comment"]), |
| (gsm_analysis_df["availability_comment_daily"] == "Availability OK") |
| & ( |
| gsm_analysis_df["tch_abis_fail_daily_comment"] |
| == "tch abis fail exceeded threshold" |
| ), |
| ], |
| [ |
| "Down Site", |
| "Availability and TX issues", |
| "Availability issues", |
| "TX issues", |
| ], |
| default="Operational is OK", |
| ) |
|
|
| |
| gsm_analysis_df = combine_comments( |
| gsm_analysis_df, |
| "BH Congestion status", |
| "operational_comment", |
| new_column="Final comment", |
| ) |
| |
| gsm_analysis_df["Final comment summary"] = gsm_analysis_df["Final comment"].map( |
| GsmCapacity.final_comment_mapping |
| ) |
| gsm_analysis_df = gsm_analysis_df[GSM_ANALYSIS_COLUMNS] |
|
|
| GsmCapacity.operational_neighbours_df = gsm_analysis_df[ |
| OPERATIONAL_NEIGHBOURS_COLUMNS |
| ] |
| distance_df = get_operational_neighbours(operational_neighbours_distance) |
|
|
| return [gsm_analysis_df, bh_kpi_full_df, daily_kpi_full_df, distance_df] |
| |
|
|